Democracy, Technological Change and EconomicGrowth
Carl Henrik KnutsenDepartment of Political Science, University of Oslo
Contact: [email protected]
April 13, 2010
Abstract
There is no consensus among academics or policy makers on whether or how democ-racy affects economic growth. This paper provides solid evidence for the hypothe-sis that democracy enhances growth. The paper reviews and evaluates some of themost important theoretical arguments on why democracy and dictatorship may af-fect growth. Particularly, this paper investigates how regime type affects technologicalchange, arguably the most important determinant of long term economic growth. Onehypothesis is that democracies have higher technology-induced economic growth thandictatorships. This hypothesis is deduced from a formal model where dictators valueboth personal consumption and staying in office. In the model, dictators can restrictcivil liberties and diffusion of information, which reduces economic growth, but in-creases dictators’ probability of surviving in office. Thereafter, the paper presents themost extensive statistical study conducted on the effect from democracy on technologi-cal change and on economic growth, drawing on panel data with time series going backto the nineteenth century for some countries. The analysis finds that democracy mostlikely produces higher technology-induced economic growth. There is also relativelyrobust evidence for the hypothesis that democracy enhances economic growth more ingeneral.
1
1 Introduction
Does democracy enhance economic growth?1 The ”Lee-thesis” (Sen 1999, 15), credited to
former Singaporean PM Lee Kuan Yew, postulates that particularly in developing countries,
a strong authoritarian regime is necessary to promote economic development. The East
Asian Tiger-states, Pinochet’s Chile and present-day China are considered decisive empirical
evidence for this assertion. However, several analysts have to the contrary argued that
democracy is beneficial for economic growth, claiming a ”democracy advantage” (Halperin,
Siegle and Weinstein 2005). Figure 1 indicates this may be the case. It shows the smoothed
3-year average GDP per capita growth rate for relatively democratic and dictatorial countries
from 1852 to 2003. Dictatorships have, on average, very seldom outgrown democracies with a
large margin. Rather, democracies have on average mostly had about equal or higher growth
rates than dictatorships, despite the dramatically changing composition of the democracy-
club over the period. However, to investigate whether there is indeed a positive effect from
democracy on growth, we must conduct more stringent analysis.
Although there are adherents to both the Lee-thesis and the democracy advantage view,
and the latter finds strong support in recent statistical analyses (Leblang 1997; Tavares and
Wacziarg 2001; Baum and Lake 2003; Bueno de Mesquita et al. 2003; Papaioannou and
Siourounis 2008; Feng 2005; Doucouliagos and Ulubasoglu 2008), the ”agnostics” have been
prominent. Two seminal contributions are Przeworski and Limongi (1993) and Przeworski
et al. (2000). The first surveyed earlier statistical studies, and found that studies claim-
ing positive, negative or no effect from democracy on economic growth were about equal
in numbers. The second conducted a thorough statistical study of its own, and found no
robust effect from democracy on GDP growth. However, the study does find indications of
1Democracy is here defined as a political system with high degrees of popular control over public decisionmaking and political equality(see e.g. Beetham 1999). Free and fair elections are crucial for securing popularcontrol over politics, but also political and civil rights are essential for democracy according to this definition(Knutsen 2011).
2
Figure 1: The figure shows smoothed three-year average GDP per capita growth for relativelydemocratic (Polity-index≥ 6) and dictatorial countries from 1852 to 2003.
3
a positive effect from democracy on GDP per capita growth. Also other studies confirm the
agnostic position (e.g. Burkhart and Lewis-Beck 1994; Helliwell 1994). These results are ac-
cepted by many prominent political scientists. Diamond (2008, 96), for example, asserts the
”evidence is murky” for the hypothesis that democracy spurs economic development, while
Tsebelis (2002, 70) reports it as a surprising fact that there is no evidence of democracies
producing superior economic outcomes. However, two points should be noted: First, studies
reporting insignificant effects from democracy on growth have often studied only the direct
effect, as they have controlled for variables constituting the main channels through which
democracy affects growth. Tavares and Wacziarg (2001), Baum and Lake (2003), Feng (2005)
and Doucouliagos and Ulubasoglu (2008) find that democracy has a positive total effect on
growth, for example because it enhances factors like human capital accumulation. Second,
the time dimension and other sample characteristics influence results (see Przeworski and
Limongi 1993; Doucouliagos and Ulubasoglu 2008). Doucouliagos and Ulubasoglu (2008)
find that studies with longer time dimensions and more data points are more reliable. In
addition to short time series affecting results, many dictatorships with poor economic track-
records, like North Korea, Myanmar, Cuba and Eritrea, are often either unwilling or unable
to provide infrastructure for data collection (see Knutsen 2011). However, both fast-growing
dictatorships and almost all democracies provide data (Halperin, Siegle and Weinstein 2005,
32-33).
This study incorporates the largest number of country-year observations in the litera-
ture, including more than 150 countries with time series going from 1820 to 2003 for some
countries. Moreover, this study investigates the total, rather than the direct effect from
democracy on growth, using pooled cross-section - time series and panel data techniques.
The effect from democracy on growth is relatively robust, but not completely. All in all,
however, the results presented here constitute a compelling case for a positive effect from
democracy on growth. Moreover, this paper elaborates on one important channel through
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which democracy likely enhances economic growth, namely technological change. The previ-
ous literature on democracy’s economic effects has mostly focused on how democracy affects
growth through physical- (see e.g. Przeworski and Limongi 1993; Tavares and Wacziarg 2001)
and human capital accumulation (see e.g. Baum and Lake 2003; Stasavage 2005).2 The eco-
nomic growth literature, however, considers technological change the central determinant of
long run growth (see e.g. Solow 1957; Nelson and Winter 1982; Romer 1990; Aghion and
Howitt 1992; Grossman and Helpman 1991; Klenow and Rodriguez-Clare 1997; Helpman
2004; Nelson 2005) (but see Mankiw, Romer and Weil 1992). A model showing how self-
interested dictators restrict civil liberties for political survival purposes is presented. In an
imperfect world where dictators can not fine-tune policies, this also inhibits dissemination
of economically relevant ideas and technologies. Limitations on freedom of speech, media
and travel inhibit economic actors’ from freely learning and adopting foreign and nation-
ally developed ideas. Thus, dictatorship slows technological change. This hypothesis finds
relatively robust empirical support when using Total Factor Productivity (TFP) growth as
proxy for technological change.
2 Literature review
In their seminal study, Przeworski and Limongi (1993) evaluated four arguments on the rela-
tionship between regime types and growth. The arguments highlight how regime type affect
property rights, investment, state autonomy and checks on predatory rulers. I reevaluate
these arguments, and include some new theoretical insight and empirical results. There-
after, I present other important arguments, particularly on democracy and human capital
accumulation.
2There are some exceptions. Przeworski et al. (2000) conducted growth accounting on data from 1950 to1990, and their results indicated that democracies may do better on technological change, but only amongrich countries. Pinto and Timmons (2005) also investigated the relationship, but relied on problematicproxies of technological change, like foreign direct investment and trade.
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2.1 Property rights
Przeworski and Limongi (1993) assess the nineteenth century-debate on democracy’s eco-
nomic consequences; the right to vote and freedom of organization were widely perceived
to have adverse effects on private property rights protection, and thus economic growth.3
Political economic models (see e.g. Meltzer and Richards 1981; Boix 2003; Acemoglu and
Robinson 2006b) indicate more progressive property redistribution in democracy, as the me-
dian voter is assumed to be poorer than those who set economic policy under dictatorship.
Poor voters, powerful because of their numbers under democracy, are expected to use their
political power to redistribute property from the rich. However, the threat to property rights
may not necessarily come from the poor; redistribution is not necessarily progressive. Any
form of government implies concentration of coercive power, which opens up for state-led
confiscation from rich and poor. However, in democracies the government’s supporters are
many, and thus internalize much of the negative effects from property rights violation on
incentives for productive activity (Olson 1993). Second, there is more power dispersion in
democracies, also between state institutions. Because of poor political accountability and
concentration of power, dictatorial elites can confiscate property more easily. Third, re-
distribution of property as ”private goods” to political supporters is relatively cheaper in
dictatorships, where the rulers’ ”winning coalitions” are smaller (Bueno de Mesquita et al.
2003). Under democracy, where winning coalitions are larger, rulers motivated by political
survival will have greater incentives to provide the ”public good” of universal property rights
protection. Several empirical studies find a positive effect from democracy on property rights
protection (Leblang 1996; Adsera, Boix and Payne 2003; Clague et al. 2003; Knutsen 2010a).
3See e.g. North (1990); Knack and Keefer (1995); Acemoglu, Johnson and Robinson (2001) for theimportance of property rights for economic growth.
6
2.2 Physical capital
There may be a dictatorial advantage in physical capital accumulation (see e.g. Przeworski
and Limongi 1993; Przeworski et al. 2000; Tavares and Wacziarg 2001; Knutsen 2010b), as
dictatorship allegedly increases savings rates. First, dictatorships often suppress freedom of
association, thus crippling independent organization of unions. In the absence of unions,
wages are likely lower, and capital-owners earn more. Thus, if savings rates increase with
income (the Kaldor-hypothesis), aggregate savings rates will be higher in dictatorships. Also,
dictatorships lack free and fair elections, which reduces the pressure on leaders to channel
resources to public consumption. Instead, dictators can push different savings-enhancing
policies, like banning luxury consumption or restricting consumer loans (see e.g. Wade 1990;
Chang 2006), independent of the desires of ”short-sighted electorates”. Likewise, dictatorial
governments can more easily reduce social security spending; the rational response of citizens
is to save privately to self-insure for the future. However, empirically there are relatively few
dictatorships with extremely high savings- and investment rates; some exceptions are the
Soviet Union, the East Asian Tigers and present-day China. The correlation between the
Polity-index and the investment/GDP ratio (from World Development Indicators), based on
3517 country-years from 1960 to 2004, was actually slightly positive (.02). Self-interested
dictators may not want policies that lead to investment-induced growth, as becomes clear
from the argument below on predatory dictators. Investment, and particularly foreign direct
investment (FDI), is sensitive to property rights protection, where democracies were argued
to have an advantage (see Li and Resnick 2003). Thus, some studies find indications that
democracy increases foreign direct investment (FDI) (e.g. Busse and Hefeker 2007). This
partly mitigates dictatorship’s capital advantage from higher domestic savings rates.
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2.3 State autonomy
Scholars studying East Asia have linked some Asian dictatorships’ economic performance
to the dictatorial state’s autonomy; ”the key to the superior economic performance of the
Asian ”tigers” is ”state autonomy,” defined as a combination of the ”capacity” of the state
to pursue developmentalist policies with its ”insulation” from particularistic pressures, par-
ticularly those originating from large firms or unions. This argument takes two steps: ”state
autonomy” favors growth, and ”state autonomy” is possible only under authoritarianism”
(Przeworski and Limongi 1993, 56). Olson (1982) argues that democracies are prone to cap-
ture by special interest groups. This may lead to policies that sacrifice economic growth for
the protection of specific business sectors or pivotal voters whose interest is not aligned with
growth. Microeconomic reforms or trade reforms may improve efficiency, but certain privi-
leged groups may lose out. Under democracy, these potential losers may be ”veto players”
(Tsebelis 2002), and block reform. Allegedly, politicians and bureaucrats in dictatorships
are often insulated from such pressures, and thus better able to conduct ”proper” policies
(e.g. Wade 1990; Leftwich 2000). Reform may also be enacted quicker under dictatorship,
since procedural steps and time-consuming negotiation can be skipped. However, it is ques-
tionable whether dictators are as autonomous as described above. Despite lack of free and
fair elections, no dictator survives without political supporters, be it the party, landowners
or the military. Bueno de Mesquita et al. (2003, 7) recognize that every leader ”answers to
some group that retains her in power: her winning coalition”. The winning coalition is again
drawn from a ”selectorate”, the group of actors that can influence the selection of leaders.
The difference between democracies and dictatorships is therefore not regimes’ degree of
autonomy, but the sizes and nature of the underlying winning coalitions and selectorates.
This insight may lead us to rethink the supposedly positive economic effects of dictatorial
insulation from the general populace.
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2.4 Predatory rulers
According to Evans (1995, 45), if autonomy is defined as not having goals shaped by social
forces, Mobutu’s regime in Zaire was very autonomous. Mobutu’s is an infamous example of
a ”predatory regime”, where the dictator and his inner clique used their powers for enriching
themselves and securing continuation in office. Dictators often promote policies to their
own benefit, even if the population suffers economically (see e.g. Robinson 1998; Bueno de
Mesquita et al. 2003; Acemoglu and Robinson 2006a; North, Wallis and Weingast 2009).
Historically, examples vary from Louis XIV’s Versailles-project to Pol Pot’s decision to kill
Cambodians with education or glasses. Clear-cut examples of predatory rulers are those that
confiscate socially productive resources for personal consumption. More generally, rulers
often use strategies for achieving personal goals, but which may reduce economic growth.
Many dictators want to minimize the probability of being thrown out of office. If an office-
motivated dictator for example believes that industrialization leads to a strong middle class
or organized working class calling for democracy, the dictator will be better off not promoting
industrialization. In democracies, leaders who try to engage in predatory activities are more
likely to be detected because of free media, more likely to be checked by the legislature and
courts, and are likely thrown out of office in the next election. These institutional features
thus provide checks on predatory behavior. However, not all dictatorships are predatory. One
reason is that dictatorships vary in terms of institutionalized checks and balances (Przeworski
et al. 2000). Moreover, in some contexts, self-interested, rational dictators may refrain from
predatory activities, because future income is tied with the economy’s growth (Olson 1993)
or because they may lead to revolution (see e.g. Overland, Simmons and Spagat 2000).
Bueno de Mesquita et al.’s (2003) analysis indicates that if dictators have relatively large
winning coalitions, they will have incentives to provide public goods instead of engaging
in predatory behavior. (Besley and Kudamatsu 2007) argue that winning coalitions who
can retain their positions as political players if a particular dictator falls from power can
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discipline the dictator.
2.5 Human capital and other channels
More recently, several studies have argued that democracy enhances growth through in-
creasing human capital (Tavares and Wacziarg 2001; Baum and Lake 2003; Doucouliagos
and Ulubasoglu 2008). (Lindert 2005) finds a strong positive effect from franchise expansion
on educational expansion in Western Europe. Franchise expansion increased politicians in-
centives’ to provide better education quality and broader coverage (see also Acemoglu and
Robinson 2006b). L., Mariscal and Sokoloff (1998) find the same effect in Latin America.
Stasavage (2005) finds that democracy has a positive effect on primary education spending
in Africa. Broadening education coverage is often an inefficient way for dictators to buy
political support, but a relatively cheap way of buying support for democratic leaders with
large winning coalitions (Bueno de Mesquita et al. 2003). Democracy may affect growth
also through other channels: Feng (2005) argued that democracy affects growth positively
through enhancing political stability. Also, democracy likely reduces corruption, at least in
consolidated democracies (e.g. Rock 2009), and corruption affects growth negatively (Mauro
1995). Moreover, Rodrik (1999) argues that democracies may be better able to implement
politically difficult, but economically efficient, reforms; the reason is that democracies posit
institutions that enable compensation of reform-losers. As Acemoglu and Robinson (2006b)
and Wintrobe (1990) point out, dictatorships also spend more resources on repressive appa-
ratuses, which takes away resources from other productive tasks.
In conclusion, except for dictatorship enhancing physical capital accumulation and per-
haps contributing to efficient but unpopular reforms in particular contexts, most arguments
above indicate an economic growth advantage for democracy. There is however another,
surprisingly overlooked, channel through which democracy may enhance economic growth,
technological change.
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3 Technological change
3.1 Technological change and economic growth
Historically, macroeconomists emphasized accumulation of inputs as determinants of in-
come (Helpman 2004, :9). However Abramowitz (1956), Solow (1957) and Denison (1962)
found that technological change contributed more than input accumulation to growth in
the US, and Denison (1968) found the same pattern for European countries. Later, (e.g.
Easterly 2001) has argued that technological change is key to growth also for poorer coun-
tries. Some empirical estimates indicate that differences in technological efficiency explain
the bulk (about 9/10) of cross-national variation in income globally (Klenow and Rodriguez-
Clare 1997). Romer (1993) discussed the importance of open idea flows for economic growth.
Ideas are non-rivalrous entities (Romer 1993); an idea can be used by several actors without
diminishing its value for others. Technological change thus not only contributes to growth
in rich countries at the ”technological frontier”, but also in developing countries (Helpman
2004), as poorer countries can adopt technological (and organizational) improvements devel-
oped elsewhere. Understanding why some countries are better at adopting production- and
organization techniques, and diffusing them throughout their economies, is therefore crucial
for understanding income level and growth differences. 4
In the model below, self-interested dictators restrict information flows by curbing civil
liberties. This, in turn, reduces technological change. The model is part of a larger class
of models, where self-interested dictators may have incentives to take actions with negative
consequences for their national economies. For example, in Olson (1993), dictators, especially
those with short time horizons, expropriate property to maximize personal consumption,
thereby reducing incentives for citizens to work or invest. In Robinson (2001) and Acemoglu
4The separation of growth due to human and physical capital accumulation and technology is not straight-forward. For example, new technologies often come with new investments in machinery (Nelson 2005), anda high human capital level may be conducive to the spread of more efficient technologies (Kremer 1993).
11
and Robinson (2006a), dictators also maximize discounted utility from consumption. In these
models, public investment and economic development more generally strengthen opposition
groups and reduce leaders’ survival probability. Leaders may thus shrink their economies,
among others through manipulating public investment levels, to maximize expected utility
from (present and) future private consumption. Bueno de Mesquita et al. (2003) assume
political leaders are interested in surviving in office, and shows how dictators under-invest in
growth-conducive public goods. For these leaders, it is rational to expropriate or tax heavily
and redistribute resources as private goods to their relatively small winning coalitions. In
Wintrobe (1990), power-motivated dictators overinvest in repressive capacity, which distorts
public resources away from more productive projects. Before presenting the model, I expand
on the role of civil liberties and open information flows for technological change.
3.2 Civil liberties, information flows and technological change
Civil liberties are better protected in democracies than in dictatorships (see e.g. Beetham
1999). Dictatorial elites may because of limited knowledge or self-interest suppress ideas
that are essentially correct(see e.g. Mill 1974), and these ideas may be of both economic
and political relevance. Open debate and free idea flows are crucial for efficient decision-
making by firms, bureaucrats and politicians, as ”the knowledge of the circumstances of
which we must make use never exists in concentrated or integrated form, but solely as the
dispersed bits of incomplete and frequently contradictory knowledge which all the separate
individuals possess” (von Hayek 1945, :519). A broad diversity of ideas improve economic
efficiency, especially when economic actors easily learn of the new ideas and select the most
efficient. A dynamic economy ”is the outcome of a constant interaction between variety
and selection” (Verspagen 2005, :496). Civil liberties, such as freedom of speech, press and
travel allow for introduction of new ideas and idea diffusion. Civil liberties also allow for
comparison of different ideas, thus allowing for the more efficient to win out. Civil liberties
12
therefore enhance both variety and selection, as the introduction of new ideas, but also
learning processes, rely on the possibility of collecting and processing information in a fairly
unrestricted manner.
Efficiency change comes not only from product innovations, but also from introduction
of new policies and changes in economic institutions and organizations(North 1990). North
(2005) argues the inherent uncertainty about policy- and organizational effects necessitates a
process of trial and error, with proper feedback from society. Open systems, associated with
democratic government and civil liberties, are crucial for such processes. In other words,
”open access orders more readily generate a range of solution to problems; they more readily
experiment with solutions to problems; and they more readily discard ideas and leaders who
fail to solve them” (North, Wallis and Weingast 2009, :134). The opportunity for actors
outside government to freely opine on political reforms therefore improves organizational-
and policy efficiency. 5 Restrictions on freedom of speech and media hurt efficiency, as
important problems are not reported and alternative viewpoints on economic policies are
either not forthcoming to the political rulers or properly debated. Civil liberties, but also
open political competition among self-interested elites (see North, Wallis andWeingast 2009),
ensure that various ideas are put forth, and properly debated. This enhances efficiency in
democracies. In contrast, dictators often seek to limit idea variety in order to retain power.
Democracies should thus have higher long-run growth rates due to more rapid technological
change.
Good examples of the mechanisms above relate to communication technologies: ”The
Internet presents a dilemma to leaders of authoritarian states and illiberal democracies. It
promises enticing commercial advantages, such as transaction cost reductions, e-commerce
possibilities, and foreign trade facilitation. Yet, by giving citizens access to outside infor-
5The ”dictator’s dilemma” is also relevant (Mueller 2003, 416-7). Because of fear of falling out with thedictator, individuals and organizations may not be forthcoming with their most accurate information, whichreduces decision making quality.
13
mation and platforms for discussion and organization, the Internet can also help politically
empower populations and potentially threaten regimes” (Hachigian 2002, :41). Cell-phone
technology also present both political problems and potential economic gains to dictators.
Bans on cell-phones have been imposed in Cuba and Turkmenistan, for example. Histori-
cally, one dictatorial regime generating technological and economic stagnation was imperial
Quing-China. China experienced a dramatic relative economic decline compared to West-
ern Europe, especially from the 19th century (see e.g. Landes 2003). The Chinese empire
was characterized by the ruling dynasty’s concentration of power and its closed nature, in
terms of foreign relations. Political rulers neglected and even outlawed new and more ef-
fective organization techniques and production technologies. Especially foreign ideas were
espoused. A letter from Emperor Ch’ien Lung to George III of England in 1793, illustrates
that dictatorship can be obstructive to adaptation of foreign ideas: When denying the British
trade requests, the Chinese Emperor wrote that the ”Celestial Empire possesses all things
in abundance. We have no need for barbarian products” (Murphey 2000, :245).
3.3 A political economic model of information flows and techno-
logical change
In the model below, self-interested dictators may have incentives to conduct policies with bad
macroeconomic effects. The model is fairly simple, as the focus here is relatively specific; the
model shows how dictators have incentives for restricting information flows, thus crippling
diffusion of technology. The model thus focuses on political institutional characteristics that
”frame the struggle between the proponents of change and their opponents, and thereby
affect the ability of countries to innovate and to implement new technologies” (Helpman
2004, :112).
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3.3.1 The economy
We use an adjusted neo-classical production function, as in (Mankiw, Romer and Weil 1992):
Y = F (TL,K,H), where Y is output, T technology level, L labor input, K physical capital
input and H human capital input. F is increasing, but concave, in all inputs. ∂Y∂T
= L · ∂F∂TL
>
0: Output increases in technological efficiency. For simplicity, we use a Cobb-Douglass
specification:
Y = F (K,L,H, T ) = KαHβ(TL)1−α−β. (1)
Technology is endogenous. However, this model does not analyze firms’ incentives to
generate new technology as in ”new growth theory” (Romer 1990; Grossman and Helpman
1991; Aghion and Howitt 1992). Generation of cutting-edge technology in increasing-returns-
to-scale sectors is mostly relevant for large and rich developed countries. However, for most
countries the global technological frontier is largely exogenous, and the diffusion (and local
adaptation) of international technology is key for technological efficiency. Thus, one can
focus on technology diffusion when modeling cross-country differences in technology-induced
economic growth. In the model, national technological change is a function of how many new
techniques national economic actors adopt, denoted At. More specifically, the rate of change
in technology is TT= ω(At). The number of new techniques developed each year globally is
A∗t , and treated as exogenous. In accordance with the discussion above, national information
flows, i, determine the degree to which a country utilize new, globally developed ideas to
produce technological change. i comes in two pure types, politically- and economically
relevant information, ie and ip. However, there is also non-pure information, iep, of both
economic and political relevance. Only ie and iep affect technological change. We thus have
that, At is a function of A∗t , ie and iep. We normalize so that ie + iep varies between 0 and
1, with 0 indicating a country that restricts all economic information flows and 1 indicating
a country that allows for the free flow of economic information. We assume, in the simplest
15
of models, that At = (ie + iep)A∗t . This means that
T
T= ω((ie + iep)A
∗t ). (2)
It can be shown, through taking logarithms and differentiating the production function, that
Y
Y= (1− α− β)
T
T+ α
K
K+ β
H
H+ (1− α− β)
L
L(3)
This again implies that
Y
Y= (1− α− β)ω((ie + iep)A
∗t ) + α
K
K+ β
H
H+ (1− α− β)
L
L(4)
Equation 4 shows that GDP growth rates depend on growth rates of physical capital, human
capital and labor, changes in the global technological frontier and the information flows in
national economies. If countries are in their steady states (see e.g. Barro and Sala-i Martin
2004), income in countries with free information flows will grow with the rate of change in
the global technology frontier. Elsewhere, steady state growth rates will be weighted down
with the degree of information flow-restrictions. A country where almost no information is
allowed, for example North Korea (see e.g. Kihl and Kim 2006), will have very low long-run
growth rates.
3.3.2 Political decision making
Let us endogenize restriction of information flows. First, we simply assume that in democ-
racies, all types of information are allowed.6 Let us therefore consider a dictator, D, in a
two-period model, who maximizes a utility function, U = U(c, q), dependent on personal
consumption, c, and political survival probability in the second period, q. U(c, q) is in-
6The assumption can be weakened to an assumption that democratic leaders restrict civil liberties lessthan dictators.
16
creasing and concave in both arguments. D receives a fixed share, λ, of Y , and therefore,
ceteris paribus, wants to increase the economy’s size to increase personal consumption. D’s
consumption is given by
ct ≤ λYt = λKαt H
βt (TtLt)
1−α−β (5)
Since there is no saving in the model and U ′(c) > 0, 5 holds with equality. We manipulate
the utility function, to analyze how D’s utility depend on consumption growth rate. We
assume an exogenously given Y0, and thus c0, in period 0. Change in consumption, ∆c, is
therefore given by
∆ct = ct − c0 = λKαt H
βt (TtLt)
1−α−β − λKα0 H
β0 (T0L0)
1−α−β (6)
For simplicity, and without loss of generality, we assume that Kt = K0, Ht = H0, Lt = L0, so
that ∆c is only a function of changes in T . Further, if we hold λ constant and use Equation
4, we find that D’s consumption growth rate cc= ∆c
c0, denoted gc, is given by
gc = (1− α− β)ω((ie + iep)A∗t ) (7)
Since c0 is exogenous, and U ′(c) > 0, U ′(∆c) > 0, and therefore U ′(gc) > 0.
Information flows are affected by policies such as restrictions on freedom of speech, media
and travel and investment in public goods related to communication technology. These are
the actual policies set by a dictator, but we model their consequence, information flows, as
choice variables to simplify. D sets policy (ie; ip; iep) in the first period. D has a probability
(1− q) of losing power in the second period. Before the revelation of whether D loses power
or not, he receives his income which is used for consumption. We assume that D consumes
whether he loses power or not. q is endogenous to information flows. The probability of
dictatorial survival decreases in ip and iep, but is unaffected by ie. That is∂q∂ip
< 0, ∂q∂iep
< 0
17
and ∂q∂ie
= 0. We model the relationship with the simple, linear function:
q = (1− (γip + ηiep)) (8)
Here, γ > 0, η > 0 and 0 ≤ γip + ηiep ≤ 1;the probability of survival varies between 1 when
no political and mixed political-economic information is allowed, and 0, which results from a
high level of political or mixed political-economic information flow. Generally, it is difficult
for dictatorial governments to screen each act of communication, travel and meeting, and
governments therefore need to establish general rules. Therefore, information activities are
banned under uncertainty of their contents. Civil liberties restrictions may not only reduce
political communication, but also economically relevant communication. Thus, disallowing
general free and open exchange of information and debate will have effects not only in terms
of stifling political opposition, but also economic dynamism. This is captured by iep > 0.One
way to model the relationships between q and ip and iep would be to assume an opposition
consisting of several individuals, all desiring to overthrow D. The probability of the op-
position overthrowing D, (1 − q), depends on coordination. As collective action problems
are solved and opposition-members coordinate, (1 − q) increases. The ability of the oppo-
sition to coordinate depends on their ability to use communication tools, assemble without
harassment or detention, gain access to media and travel freely. Therefore, restrictions on
civil liberties that reduce, ip and iep, reduce the opposition’s ability to coordinate and thus
(1− q).
Let us return to D’s transformed utility function, U(gc, q). If we insert for Equations 7
and 8, we get:
U(gc, q) = U((1− α− β)ω((ie + iep)A∗t ), (1− (γip + ηiep))) (9)
From Equation 9, one may see that D minimizes ip and maximizes ie. D cracks down on
18
all information flows that are politically dangerous but irrelevant for economic efficiency,
and opens up for information that improves economic efficiency but is irrelevant for political
survival. We can show this more stringently:
∂U
∂ip= −γ ∂U
∂q(10)
∂U
∂ie=
∂U
∂gc· (1− α− β)A∗
tω′(At) (11)
Equations 10 and 11 show it is always rational for the dictator to increase ie, as∂U∂ie
> 0 and
reduce ip as ∂U∂ip
< 0. Thereby ie and ip will be set at their maximum and minimum levels
respectively. The interesting trade-off in the model relates to iep. D on the one hand wants
to allow iep because it increases efficiency and thus private consumption growth. But, on the
other, he wants to restrict iep because it puts his political survival at risk. The first-order
condition is given by:
∂U
∂iep=
∂U
∂gc· (1− α− β)A∗
tω′(At)− η
∂U
∂q(12)
Since in optimum ∂U∂iep
= 0, Equation 12 implies that the dictator will set iep, so that:
∂U
∂gc· (1− α− β)A∗
tω′(At) = η
∂U
∂q(13)
7 Equation 13 shows that in optimum, the dictator will balance increase in marginal util-
ity from consumption against the expected marginal utility-decrease from reduced survival
probability, when setting iep. Thus, some iep is restricted in dictatorships, whereas all iep
is allowed in democracies. The model thus indicates that democracies will experience more
rapid technological change than dictatorships.
7This can be rewritten in marginal rate of substitution form to∂U∂gc∂U∂q
= η(1−α−β)A∗
tω′(At)
.
19
Several other propositions follow from the model. For example, dictators ruling over
economies with high capital shares or in periods with slow global technological change, and
dictators with a weak hold on power or who expect reduced consumption after losing power
will restrict civil liberties more harshly. Thus, they slow down technological change relative
to democracies more (see Knutsen, 2011).In Knutsen (2009), I showed how strong state
institutions and an independent, effective bureaucracy are particularly important for growth
in dictatorship, as they curb leaders’ opportunities to promote bad economic policies. This
model presents an additional mechanism explaining the strong interaction between state
capacity and regime type on growth: Even with limitations on freedom of speech and press,
high-capacity dictatorships may perform adequately on idea diffusion, because of better
abilities for absorbing and interpreting weak information signals. Such dictatorships may
also be better able to design policies that enable separation of politically and economically
relevant information. For example, a high-quality bureaucracy may be able to fine-tune
internet policies so that only politically problematic pages are blocked. In terms of the
model, iep decreases as bureaucratic quality, b, increases: iep = iep(b), where i′ep(b) < 0. As
ie + iep = 1, i′e(b) > 0. In democracies, where all information, also all iep, is allowed, b will
not matter for technological change. In a hypothetical case where the bureaucracy is able to
screen perfectly so that iep is zero, democracies and dictatorships have equal technological
change rates. This hypothesis is tested, but find only some empirical support in Knutsen
(2011).
4 Data
Chang (2006, 145) notes that 1960 is ”year zero” in statistical studies on economic devel-
opment. Lacking data has forced quantitative social scientists to leave out the main part of
modern history from the ”dual revolutions”; the industrial revolution in Great Britain and
20
the political revolutions in eighteenth century United States and France. This study is the,
so far, most extensive study on democracy and growth, incorporating data from 1820 (for
some countries) to 2003. There is data for more than 150 countries. Several countries, often
left out of studies because of lacking GDP-data, like North Korea, are included here. This
is important not only because of pure sample-size considerations, but also because results
are biased when the economically worst performing dictatorships are left out. Despite a
preference for the broader Freedom House Index (see Knutsen 2011), I use the Polity-Index
(PI) from the Polity IV data-set, as democracy measure because of its longer time series.
The PI goes from -10 (most dictatorial) to 10 (most democratic). The index’ dimensions are
competitiveness and openness of executive recruitment, constraints on the chief executive,
and competitiveness and regulation of political participation. I leave out country-years in
interregnum-periods (Marshall and Keith 2002, 17), mainly periods of internal anarchy or
civil war. I also leave out country-years coded as ”foreign interruption”, mainly registering
foreign occupation. Unsystematic measurement errors in independent variables generate at-
tenuation biases (Greene 2003, 83-90). If there is unsystematic measurement error in the PI,
the PI-coefficient will be biased towards zero.
Data on GDP and population, collected from Maddison (2006), go back to 1820 for some
countries. Estimating GDP for years when the national accounting system was not invented
is difficult, and Maddison’s estimates contain large errors. Maddison (2007, 294) claims that
”[t]here is still a need to fill gaps and crosscheck existing estimates, but the broad contours
of world development in this period are not under serious challenge” Different sources and
procedures have been used to estimate population and GDP-data (see Maddison 2006, 169-
228). Maddison utilizes PPP-adjusted GDP-data (US 1990$), which take into account local
price levels. I include around 800 country-years where data on GDP per capita growth or level
or population level is constructed by interpolation, assuming constant growth rate. Several
of the time series are interrupted in the Maddison data-set. I only constructed interpolated
21
GDP data where at least 90% of the years missing between two observation-years have the
same PI-score.8 Thus, the dependent variable, GDP per capita growth, is measured with
error. If this error is unsystematic, it will be more difficult to find significant regression
coefficients, for example for the PI.
Measuring technological change is difficult (see e.g. Nelson 2005). One common measure
is TFP-growth. TFP is calculated as a residual, where economic growth stemming from
changes in physical capital, human capital and labor are subtracted from total growth (see
e.g. Barro and Sala-i Martin 2004; Baier, Dwyer Jr. and Tamura 2002). I utilize the extensive
TFP-data from Baier, Dwyer and Tamura (2006), covering 145 countries, with 24 countries
having time series longer than 100 years. The TFP-data are estimated with uneven intervals,
approximately averaging a data point every tenth year for most countries.9 I interpolate these
series, assuming constant TFP-growth rates within periods. I use both the interpolated
annual data, and the periodic observations given by Baier, Dwyer and Tamura (2006) in
different analyses below. There are several potential biases in TFP (see e.g. Rodrik 1997;
Verspagen 2005). Among others, it may be underestimated since investment likely increases
when technology level increases. If so, technological change is a cause of capital accumulation,
but growth will be assigned to capital accumulation in the growth accounting. Nevertheless,
there is no obvious reason why such biases should critically influence the relationship between
democracy and TFP. Measurement error may be a particular problem for the older data
(see e.g. Maddison 2006; Baier, Dwyer and Tamura 2006). If TFP measurement errors are
unsystematic, they do not bias regression coefficients but only increase their standard errors,
thereby making it harder to find significant results.
Technological change and economic growth are not only a function of regime type. I
8I thus have artificially low variation in the estimated GDP per capita growth rates, but the averagegrowth rate is correct by construction.
9These authors use data from multiple sources, and calculate TFP using income per worker rather thanper person. They assume Hicks-neutral technology and a capital share of 1/3. For a closer description ofthese data and the underlying assumptions, see Baier, Dwyer Jr. and Tamura (2002).
22
thus control for several variables. Because of probable convergence effects, log TFP-level is
controlled for in TFP-growth regressions, and log GDP per capita-level in GDP per capita-
growth regressions. Log population is controlled for in both regressions, and so is log regime
duration, a proxy for political stability based on data from Polity IV. Moreover, I control for
ethnic fractionalization, using data from Alesina et al. (2003). To control for cultural and
political-historical factors, plurality religion and historical colonizer dummies are entered.10I
also add region- and decade dummies to control for geographic- and time-specific effects.
Papaioannou and Siourounis (2008) find that democracy’s effect on growth peaks and sta-
bilizes after 3 years. However, there are reasons to believe that the lag in effect from regime
type on TFP-growth in particular is longer Knutsen (2011). We thus run regressions that
use a 5-year lag on all independent variables. Moreover, the longer the PI-lag, the smaller
are potential endogeneity problems related to growth rates influencing regime type (Helli-
well 1994) (also remember that we control for income level). However, robustness checks are
conducted with 2- and 3-year lags.
5 Empirical analysis
5.1 Technological change
I run OLS with Panel Corrected Standard Errors (PCSE) (see Beck and Katz 1995), which
takes into account heterogeneous standard errors and contemporaneous correlation between
panels, and AR(1) autocorrelation within panels. OLS with PCSE allows us to draw on
information from both cross-country and within-country comparisons. However, there may
be country-specific characteristics biasing these results. I therefore run RE and FE to check
the results’ robustness. The models in Table 1 utilize the interpolated TFP-data, with
country-year as unit of analysis. There is generally very good support for the hypothesis that
10See Knutsen (2007, 67-68) for the coding of these dummies.
23
democracies experience more rapid technological change; dictatorship reduces TFP-growth
relative to democracy. In all models, the regime coefficient has the expected sign, and the
effects are all significant at the 1%-level. The t-values for the RE- and FE models with
the 5-year lag are above 5, indicating that democracy clearly enhances technology-induced
growth, even when taking into account country-specific factors. The size of the estimated
effects are quite substantial; they indicate an effect of about 0.6 to 0.7 percent extra TFP-
growth per year, when going from most dictatorial to most democratic. When taking a long
view, say 100 years, a country with a 0.7 percent higher TFP-growth than another otherwise
equal country, would be twice as rich as the other at the end of the period, if starting out
equally rich. If democracies in addition grow more because they enhance human capital
accumulation (see e.g. Tavares and Wacziarg 2001; Baum and Lake 2003), democracies have
a quite substantial growth advantage on dictatorships because of knowledge-related factors.
Dictatorships may hoard physical capital investment better (Tavares and Wacziarg 2001;
Przeworski and Limongi 1993), but in the long run knowledge matters, and democracies
prosper.
The results above were robust to substituting the 5-year lag with a 3-year lag.11 However,
regressions using 2-year lags yielded insignificant results. I also ran models using 10-year lags,
and models using Freedom House’s Civil Liberties index (data back to 1972) as independent
variable. The results were relatively robust to these changes. The results were also relatively
robust to controlling for other factors, such as absolute latitude and the Frankel-Romer
trade index. Moreover, the model above indicated that dictators’ survival probability, and
thus regime duration, is endogenous to technologically relevant policies. We thus left out
log regime duration, but the results were very similar, although some models showed even
larger PI-coefficients and t-values. However, the interpolation conducted above may be
problematic, as it expands the number of data points and introduces additional measurement
11All robustness check-results are available on request.
24
Table 1: OLS with PCSE, RE and FE models with 5-year lags and TFP-growth as dependentvariable. Time dummies and constant omitted from table. *** p < 0.01, ** p < 0.05, *p < 0.10
Variable—Model OLS PCSE RE FEb (t) b (t) b (t)
Polity 0.029*** (3.32) 0.037*** (5.59) 0.034*** (5.03)Ln TFP -2.031*** (-3.64) -2.679*** (-17.62) -3.241*** (-20.32)Ln Population -0.106 (-1.33) -1.222*** (-11.81) -2.634*** (-17.85)Ln Regime dur. 0.013 (0.50) -0.113*** (-3.93) -0.144*** (-5.02)Ethnic fraction. -1.002** (-1.97) -1.214 (-1.33) .British 0.103 (0.32) -0.322 (-0.59) .French 0.164 (0.63) -0.394 (-0.61) .Portuguese -0.836 (-0.94) 0.406 (0.35) .Spanish 0.321 (0.43) 0.029 (0.03) .Belgian -2.905** (-2.45) -3.382** (-2.17) .Sunni -0.494 (-0.51) 0.271 (0.14) .Shia -1.581 (-1.37) 0.525 (0.23) .Catholic 1.197 (1.00) 2.078 (1.00) .Protestant+ 0.605 (0.57) 0.842 (0.41) .Orthodox -1.296 (-1.19) -0.759 (-0.35) .Hindu -0.121 (-0.11) 0.422 (0.18) .Buddhist+ 0.619 (0.57) -0.528 (-0.24) .Indigenous -0.903 (-0.84) -0.952 (-0.44) .E.Eur.+Soviet rep. -1.830*** (-3.71) -4.339*** (-5.80) .Africa SS -1.306** (-1.97) -3.003*** (-3.58) .Asia-Pacific -1.313* (-1.68) 0.040 (0.04) .MENA 1.480* (1.88) -0.093 (-0.10) .Latin America -1.575* (-1.90) -3.508*** (-3.26) .N 6720 6720 6720
25
error. Therefore, I calculated average annual TFP-growth rates between time-points where
Baier, Dwyer and Tamura (2006) provide TFP-estimates. Some of these periods are as short
as four years, and I include periods of up to twenty years. However, the large majority of
periods are ten years in duration (581 of 795). One period counts as one observation. For
the control variables, I used values at the start of the time period. However, for political
regime, I calculated the average of the PI over the five years prior to the period and all years
within the period except the five latest years, to account for the effect-lag on TFP-growth.
Democracy enhances TFP-growth also in these regressions. Independent of whether we
control for country-fixed effects or not, the effect from democracy is statistically significant
at least at the 5%-level. To sum up, there is robust evidence that democracy enhances
TFP-growth, as expected from the model above. Since TFP-growth is the main source of
long-term economic growth rates, there is also reason to expect that democracy enhances
GDP per capita growth. However, we still need to investigate whether democracy improves
economic growth empirically
5.2 Economic growth
Due to Maddison’s and Polity’s extensive data sets, this study draws on data from 154 exist-
ing and previous countries: the number of observations is around 8800 for models using 5-year
lags on independent variables, which is for example about twice the number of observations
used in (Przeworski et al. 2000). Models using 2-year lags draw on around 9400 observations.
Table 2 shows a positive effect from democracy on economic growth for the models using
5-year lags. The PCSE and RE models show a significant effect at least at the 5% level. This
is true also for models using a 2-year time lag, but the effect is not robust when using 3-year
lags. The estimated effect of going from least to most democratic according to the 2-year-
and 5-year lag PCSE and RE models, vary between 0.6 and 1.0 percentage points extra
annual GDP per capita growth. The FE-models, however, do not show significant effects,
26
Table 2: Results from OLS PCSE, RE and FE models with 5-year lags and GDP per capitagrowth as dependent. Time dummies and constant omitted from table. *** p < 0.01, **p < 0.05, * p < 0.10
Variable—Model OLS PCSE RE FEb (t) b (t) b (t)
Polity 0.036*** (2.65) 0.032** (2.26) 0.020 (1.28)Ln GDP pc -0.631*** (-2.67) -1.621*** (-8.80) -3.181*** (-13.05)Ln Population -0.005 (-0.09) -0.311*** (-3.33) -1.637*** (-6.29)Ln Regime dur. -0.038 (-0.62) -0.042 (-0.68) 0.002 (0.04)Ethnic fraction. -0.604 (-1.63) -0.753 (-1.12) .British 0.210 (0.78) 0.105 (0.25) .French -0.550* (-1.73) -1.056** (-2.04) .Portuguese 1.174** (2.19) 0.184 (0.19) .Spanish 1.591*** (2.88) 1.626** (1.99) .Belgian -0.030 (-0.03) -1.377 (-1.05) .Sunni -0.942 (-1.53) -1.388 (-0.86) .Shia -3.046*** (-3.12) -2.990* (-1.72) .Catholic -0.279 (-0.34) -0.274 (-0.16) .Protestant+ -0.529 (-0.70) -0.143 (-0.08) .Orthodox -0.942 (-1.05) -1.203 (-0.68) .Hindu -0.395 (-0.44) 0.351 (0.19) .Buddhist+ 1.238 (1.44) 0.882 (0.49) .Indigenous -1.667** (-2.46) -1.235 (-0.70) .E.Eur.+ Soviet rep. 0.289 (0.78) 0.147 (0.23) .Africa SS -1.720*** (-2.94) -3.817*** (-5.20) .Asia-Pacific -1.430* (-1.70) -2.593*** (-2.83) .MENA 0.570 (1.01) -0.048 (-0.06) .Latin America -2.429*** (-4.24) -3.657*** (-4.37) .N 8822 8822 8822
but the estimated effect is positive. Nevertheless, these models utilize a stringent inference
procedure as they do not allow cross-country comparisons to affect results. Moreover, when
we substitute the decade dummies with dummies that capture broader time period effects
(1871-1913, 1914-1945, 1946-1972, 1973-2003), the FE-results are also significant at least at
the 5%-level for models using 2-, 3- and 5-year lags.
The results above are in line with some of the more recent studies on democracy and
growth (e.g. Tavares andWacziarg 2001; Baum and Lake 2003; Bueno de Mesquita et al. 2003;
27
Papaioannou and Siourounis 2008; Feng 2005), including the very thorough meta-study by
Doucouliagos and Ulubasoglu (2008). The latter study shows that the sample’s time period
influences results, and that studies drawing on longer time series are more reliable. This is
good news for this study, as it draws on the longest time series in the literature. Although
the different models above build on different assumptions, we most often find statistically
significant effects at least at the 5%-level, and all models show a positive estimated effect.
But, how robust are the results? First, I relaxed the assumption that democracy’s ef-
fect on growth is linear. I used the nnmatch command in STATA to estimate the average
treatment effect (ATE) from democracy on growth with non-parametric, nearest neighbor
matching. Replacement is allowed in the estimation procedure. I used robust standard
errors (see Abadie and Imbens 2002).12 The unit of analysis is country-year. In practice,
we therefore draw on variation stemming from a single country changing regime type, and
on information from comparisons between relatively similar countries with different regime
types. The Polity-variable is dichotomized, and I chose two different cut-off points for democ-
racy (≥ 0 and ≥ 4) to check the results’ robustness. I also explored different numbers of
matches (one, three, five and ten closest matches). All democracy-coefficients are positive
and significant at the 5%-level, and almost all are significant at the 1%-level.13 The ATE
is positive and substantial in size. Some of the matching-results indicate a far larger effect
from democracy than the linear models; sometimes democracy yields an ATE larger than
2% extra GDP per capita growth.
Second, I investigated whether endogeneity of regime type might drive the results above.
One simple way to investigate endogeneity is through a simple Granger-test. Democracy
in t − 1 was estimated to have a positive, significant effect (1%-level) on growth in t, even
when controlling for growth in t − 1. When democracy in t was entered as a function of
12The calculation of these standard errors are based on 1 match with relatively similar units having similarvalues on the treatment variable.
13These models use a 2-year time lag.
28
democracy in t − 1 and growth in t − 1, the estimated effect from growth was actually
negative and significant at the 5%-level. According to this analysis, one should actually
expect that the models above underestimate the positive effect from democracy on economic
growth. However, the effect from democracy on growth is not robust when we run panel-
data 2SLS analysis (G2SLS), using lagged polity-values (see Helliwell 1994) and/or WAVE, a
dummy based on whether the current regime change originated in one of Huntington’s reverse
waves (see Knutsen 2011), as instruments.14 The G2SLS coefficients are mostly insignificant.
However, Hausman tests did not reject the hypothesis of similar coefficients, even at the 10%-
level, when comparing coefficients from (efficient) RE and (consistent) G2SLS models. One
interpretation of this result is that the endogeneity problem is not severe, and that we can use
the efficient RE-results; these show a statistically significant, positive effect from democracy.
The results can thus be interpreted to support the hypothesis that democracy enhances
growth. However, the results above are not completely robust. Empirically, there is large
variation in growth rates among democracies (e.g. Persson and Tabellini 2003) and especially
dictatorships (Rodrik 2000; Przeworski et al. 2000; Besley and Kudamatsu 2007; Knutsen
2011). Thus, degree of democracy does not, by far, explain all variation in economic growth
rates. As a large literature has documented, other institutional structures also matter for
growth. Moreover, the effect from democracy and dictatorship on growth may be contingent
on other factors, such as a leader’s personal characteristics, existence of alternative institu-
tional or non-institutional checks on rulers, and type of security threat facing a regime (see
e.g. Jones and Olken 2005; Wintrobe 1998; Olson 1993; Przeworski et al. 2000; Bueno de
Mesquita et al. 2003; Besley and Kudamatsu 2007; Acemoglu and Robinson 2006a; Doner,
Ritchie and Slater 2005; Knutsen 2011). For example, empirical results clearly indicate the
effect from democracy on growth is significantly more positive among countries with weak
14Country-years where the reigning regime originated in the periods ⟨←, 1827], [1922, 1942], [1958, 1975],[1998, 2003] are scored a 1 on WAVE.
29
state capacity (Knutsen 2009).
Moreover, the effect from democracy on growth may have changed over time. The main
sources of economic growth may increasingly be knowledge-related factors (see e.g. Galor
and Moav 2004; Goldin and Katz 2001; Houghton and Sheehan 2000). If economic growth
increasingly is determined by human capital and technology diffusion, and decreasingly by
physical capital, democracy’s growth advantage may have been larger in 1995 than in 1895.
Moreover, the increasing volume of FDI could mean that domestic savings rates, the ”com-
parative advantage” of dictatorships, is less important even for physical capital accumula-
tion. Empirical studies indicate that democracy may increase incoming FDI-volumes (see
e.g. Busse and Hefeker 2007; Li and Resnick 2003). I tested whether democracy had a more
positive effect on growth over the last decades, by conducting Chow-tests (see e.g. Greene
2003). I added an interaction term, where PI is multiplied with a post-1980 dummy, to the
OLS PCSE, RE and FE models above. There is indeed quite robust evidence that the effect
from democracy has become more positive after 1980. Both when using two- and five-year
lags on the independent variables, the interaction term is always positive and significant at
least at the 10%-level.15 The only exception is the OLS PCSE model, using a five-year time
lag. Here, the linear PI is significant at the 5%-level, but the interaction term is insignificant
at conventional levels.
6 Conclusion
The statistical analyses conducted in this article, based on the most extensive data-sample
in the literature, indicate that democracy has a positive impact on economic growth. The
effect from democracy on growth is relatively, but not completely, robust. The results above
reinforce the results in for example Baum and Lake (2003), Bueno de Mesquita et al. (2003),
15The results do not change much when we use a post-1985 dummy rather than a post-1980 dummy.
30
Feng (2005), and Doucouliagos and Ulubasoglu (2008), which have recently challenged the
widespread ”agnostic position” on democracy and growth. These authors correctly point
out that increased human capital accumulation and strengthened property rights protection
are two of the main reasons why democracy enhances growth. However, the theoretical
model presented above indicate an additional important reason: In dictatorships, technology
diffusion is slowed down because dictators manipulate civil liberties and promote policies
that inhibit idea diffusion. Although dictators in an optimal world may have wanted to
promote technological change to increase their own consumption, dictators in practice restrict
technological change as they are unable to perfectly separate politically dangerous from
economic efficiency-enhancing information. Empirical results, based on a very extensive
data material, corroborated this hypothesis; democracies have higher TFP-growth rates.
In the long run, therefore, democracies should prosper more than dictatorships. Physical
capital accumulation, where dictatorships often perform well (Tavares and Wacziarg 2001;
Przeworski and Limongi 1993), probably only has a transitional effect on growth (Solow
1956; Barro and Sala-i Martin 2004). The effect from technological change on growth is not
transitional (Romer 1990; Barro and Sala-i Martin 2004). Moreover, technology diffusion,
and human capital accumulation, may have become more important for growth over the
last decades, and this should increase democracy’s growth advantage over dictatorship. This
paper provides evidence also for this hypothesis; democracy’s effect on growth was higher
after 1980 than before.
31
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