informality, welfare and productivity
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Informality, Welfare and Productivity. Carmen Pag és Inter-American Development Bank Labor Markets Unit (LMK). How does informality affect workers’ welfare?. I will argue that informality affects welfare not in the way we (I?) thought… - PowerPoint PPT PresentationTRANSCRIPT
Informality, Welfare and Productivity
Carmen PagésInter-American Development Bank
Labor Markets Unit (LMK)
How does informality affect workers’ welfare?
• I will argue that informality affects welfare not in the way we (I?) thought…
• That is…not by condemning informal workers to “bad” jobs… (at least not to all)
• But rather, lowering aggregate productivity and with it, the earnings of most workers (formal and informal, as well as firm’ owners)
• And by.. making labor and social policy extremely difficult and ineffective
This presentation:
1. How does informality affect individuals´ welfare? – Are formal workers better off? Which ones?
2. What is the effect of informality on aggregate productivity?
3. How does informality affect labor and social protection policies?
4. Policies to increase formality • Credit and formality
The one-slide presentation
1. Informal workers are not necessarily worse off (particularly the self-employed with low education attainment)
2. Yet Informality creates important aggregate problems:
• It kills the efficacy of labor and social protecction policies as we know them;
• It reduces aggregate productivity.
3. A more proactive approach needed:
• Re-designing labor and social policies to be informality-proof• Or tackling informality: reducing cost of formality, and
Increasing its benefits.
• More access to credit helps.
Part I: Informality and Individual welfare:Based on
“Is Informality a good Measure of Job Quality?:
Evidence from Job Satisfaction Data”Lucia Madrigal, IADBCarmen Pagés, IADB
Informality: Choice or/and exclusion?
• Wage differentials –positive but affected by selection bias.– If corrected using semi-parametric methods or
panel data much smaller differentials.– Wages do not necessarily reflect welfare
• Mobility studies– if workers value formality they should voluntarily move to formality and involuntarily away from formality. – “revealed preferences” – Problem. In most cases we do not observe if
movements are voluntary or not.
In our work
• Use job satisfaction data to assess whether informal jobs are less valued than formal jobs
• If workers in formal jobs enjoy rents they should report higher levels of job satisfaction than informal workers.
Job satisfaction: the literature
• In similar approaches, subjective job satisfaction measures have been used to understand the – Determinants of job quality (Clark, 2004; Sousa
Poza and Sousa Poza, 2000) – Determinants of utility of unemployed workers (is
unemployment voluntary?) – Whether self-employment enjoy rents.
To data these studies conducted mostly in developed countries.
Rather than adhering to any particular definition of informality, we distinguish between:
• Self-employed;• Employed in firms of more than 10
employees with benefits;• Employed in firms of more than 10
employees without benefits• Employed in firms with less than 10
employees without benefits;
We examine the determinants of Job satisfaction as a function of:
• X1: Observable worker characteristics (gender, age, educ, health status, civil status)
• Z1: Job category cum benefit variables:• Self-employed;• Employed in a small firm• Employed in a large firm without benefits• Employed in a large firm with benefits
• Z2: Objective job characteristics (earnings, industry, occupation, hours )
• Z3: Subjective job characteristics (well remunerated, opportunities for promotion, job is stressful, job is dangerous, monotonous, good work schedule, job is insecure, )
Methodological issues (I)
• Omitted variable bias: Correlation between job satisfaction and subjective variables may be driven by innate unobservable individual traits (i.e optimism).
– We control for different degree of optimism as in van Praag (08)• We make use of individuals’ valuations (Vi) about other aspects
(health policy, education policy, transportation)/– Regress different Vi on Xi;– Obtain principal components of residuals. – Add the first principal component (Ki) in (1).
• Sample selection issues, particularly for women, may be important –need to control for it.
Methodological issues (II)
• Further omitted variable bias issues: Even after controlling for optimism one could argue that the relationship between type of job and job satisfaction is driven by unobservable variables.
– For example, less able individuals choose informality and at the same time have lower expectatives and therefore higher JS.
• Need panel data to properly account for that, however data contains information on whether workers prefer working as self-employed or salaried.
Data (I)
• Data for three low income countries (Guatemala, Honduras, El Salvador)
• Collected by Statistical National Offices in 2007
• Nationally representative samples (18-64 years old)– Honduras: 8288 individuals.– El Salvador: 1082 individuals– Guatemala: 1400 individuals
• One individual randomly selected within the household answers a longer questionnaire
• In practice some over-representation of women
• Re-weighting
Data (II)
• Data contains info on: – Individual (including health status) and
objective work characteristics– Job satisfaction and subjective
appreciations of job characteristics
• Whether workers would prefer being salaried or self-employed– Job satisfaction defined as “are you
satisfied with the job you do?”
Job Characteristics by Job CategoryWeighted Sample of Workers 18 to 64 years old-Honduras
Self-Employed
Salaried_small
Salaried large-no benefits
Salaried large-
benefitsDependent Variable
Job Satisfaction 0.865 0.731 0.837 0.943Objective Job Characteristics (Z 2i )
Hours (monthly) 149.77 165.10 181.32 163.07Log Earnings (monthly) 7.632 7.469 8.432 9.023Primary activities 0.379 0.344 0.086 0.014Manufacturing 0.137 0.074 0.327 0.080
Construction, retail, trasnsport and storage 0.399 0.362 0.178 0.135Utilities, financial and personal serv. 0.085 0.219 0.409 0.771
Subjective Job Characteristics (Z 3i )
Stressful 0.503 0.483 0.534 0.646Dangerous 0.327 0.353 0.349 0.239Monotonous 0.167 0.188 0.146 0.075Progress Opportunity 0.644 0.514 0.718 0.767Good Schedule 0.852 0.818 0.823 0.872Well Remunerated 0.583 0.506 0.570 0.557Insecure Job 0.106 0.291 0.197 0.086
Ranking does not correspond with traditional distinctions based on firm size
Job Characteristics by Job CategoryWeighted Sample of Workers 18 to 64 years old-Honduras
Self-Employed
Salaried_small
Salaried large-no benefits
Salaried large-
benefitsDependent Variable
Job Satisfaction 0.865 0.731 0.837 0.943Objective Job Characteristics (Z 2i )
Hours (monthly) 149.77 165.10 181.32 163.07Log Earnings (monthly) 7.632 7.469 8.432 9.023Primary activities 0.379 0.344 0.086 0.014Manufacturing 0.137 0.074 0.327 0.080
Construction, retail, trasnsport and storage 0.399 0.362 0.178 0.135Utilities, financial and personal serv. 0.085 0.219 0.409 0.771
Subjective Job Characteristics (Z 3i )
Stressful 0.503 0.483 0.534 0.646Dangerous 0.327 0.353 0.349 0.239Monotonous 0.167 0.188 0.146 0.075Progress Opportunity 0.644 0.514 0.718 0.767Good Schedule 0.852 0.818 0.823 0.872Well Remunerated 0.583 0.506 0.570 0.557Insecure Job 0.106 0.291 0.197 0.086
Job characteristics
Job Characteristics by Job CategoryWeighted Sample of Workers 18 to 64 years old-Honduras
Self-Employed
Salaried_small
Salaried large-no benefits
Salaried large-
benefitsDependent Variable
Job Satisfaction 0.865 0.731 0.837 0.943Objective Job Characteristics (Z 2i )
Hours (monthly) 149.77 165.10 181.32 163.07Log Earnings (monthly) 7.632 7.469 8.432 9.023Primary activities 0.379 0.344 0.086 0.014Manufacturing 0.137 0.074 0.327 0.080
Construction, retail, trasnsport and storage 0.399 0.362 0.178 0.135Utilities, financial and personal serv. 0.085 0.219 0.409 0.771
Subjective Job Characteristics (Z 3i )
Stressful 0.503 0.483 0.534 0.646Dangerous 0.327 0.353 0.349 0.239Monotonous 0.167 0.188 0.146 0.075Progress Opportunity 0.644 0.514 0.718 0.767Good Schedule 0.852 0.818 0.823 0.872Well Remunerated 0.583 0.506 0.570 0.557Insecure Job 0.106 0.291 0.197 0.086
Job Characteristics by Job CategoryWeighted Sample of Workers 18 to 64 years old-Honduras
Self-Employed
Salaried_small
Salaried large-no benefits
Salaried large-
benefitsDependent Variable
Job Satisfaction 0.865 0.731 0.837 0.943Objective Job Characteristics (Z 2i )
Hours (monthly) 149.77 165.10 181.32 163.07Log Earnings (monthly) 7.632 7.469 8.432 9.023Primary activities 0.379 0.344 0.086 0.014Manufacturing 0.137 0.074 0.327 0.080
Construction, retail, trasnsport and storage 0.399 0.362 0.178 0.135Utilities, financial and personal serv. 0.085 0.219 0.409 0.771
Subjective Job Characteristics (Z 3i )
Stressful 0.503 0.483 0.534 0.646Dangerous 0.327 0.353 0.349 0.239Monotonous 0.167 0.188 0.146 0.075Progress Opportunity 0.644 0.514 0.718 0.767Good Schedule 0.852 0.818 0.823 0.872Well Remunerated 0.583 0.506 0.570 0.557Insecure Job 0.106 0.291 0.197 0.086
Table 3Probit-Mg Effects All Workers-Honduras 18-64 years oldDependent Variable: Job Satisfaction
(1) (2) (3) (4) (5) (6) (7) (8)Salaried_small -0.1257*** -0.1226*** -0.1267*** -0.0755*** -0.0658*** -0.0398* -0.0629*** -0.0384*
(0,0205) (0,0218) (0,0227) (0,0238) (0,0217) (0,0229) (0,0216) (0,0228)Salaried_lg_nobenefits -0,0165 -0.0411** -0,0301 -0.0460** -0,0082 -0,0073 -0,0071 -0,0065
(0,0152) (0,0176) (0,0187) (0,0218) (0,0182) (0,0211) (0,0181) (0,0209)Salaried_lg_benefits 0.0961*** 0,0575 0.0757** 0,0541 0.0633** 0.0617* 0.0625** 0.0607*
(0,0260) (0,0362) (0,0330) (0,0428) (0,0291) (0,0344) (0,0288) (0,0342)Other Controls None Ind. charact. Ind, objective. Ind, objective. Ind, objective. Ind, objective. Ind, objective. Ind, objective.
job charact. job charact. job charact. job charact. job charact. job charact.
earnings subj. chr. subj. chr. subj. chr. subj. chr.earnings optimism optimism
earningsObservations 3764 3743 3706 3068 3065 2550 3045 2536Pseudo_R2 0,0176 0,0365 0,0444 0,067 0,181 0,191 0,184 0,194Standard errors in parentheses; *** p<0.01, ** p<0.05, * p<0.1
Table 3Probit-Mg Effects All Workers-Honduras 18-64 years oldDependent Variable: Job Satisfaction
(6)Salaried_small -0.0398*
(0.0229)Salaried_lg_nobenefits -0.0073
(0.0211)Salaried_lg_benefits 0.0617*
(0.0344)Hours (monthly) 0.0002**
(0.0001)Manufacturing -0.016
(0.0302)Const,retail,transport 0.0204
(0.0274)utilities, insurance and soc. serv. 0.011
(0.0278)Stressful -0.0183
(0.0142)Dangerous -0.0084
(0.0155)Monotonous -0.0558***
(0.0202)Progress Opportunity 0.0872***
(0.0170)Good Schedule 0.1188***
(0.0219)Well Remunerated 0.1280***
(0.0160)Insecure Job -0.0819***
(0.0211)Log Earnings (monthly) 0.0255***
(0.0080)Observations 2550Pseudo_R2 0.191
Omitted category self-employed
Table 3Probit-Mg Effects All Workers-Honduras 18-64 years oldDependent Variable: Job Satisfaction
(6)Salaried_small -0.0398*
(0.0229)Salaried_lg_nobenefits -0.0073
(0.0211)Salaried_lg_benefits 0.0617*
(0.0344)Hours (monthly) 0.0002**
(0.0001)Manufacturing -0.016
(0.0302)Const,retail,transport 0.0204
(0.0274)utilities, insurance and soc. serv. 0.011
(0.0278)Stressful -0.0183
(0.0142)Dangerous -0.0084
(0.0155)Monotonous -0.0558***
(0.0202)Progress Opportunity 0.0872***
(0.0170)Good Schedule 0.1188***
(0.0219)Well Remunerated 0.1280***
(0.0160)Insecure Job -0.0819***
(0.0211)Log Earnings (monthly) 0.0255***
(0.0080)Observations 2550Pseudo_R2 0.191
Omitted category self-employed
Earnings strongly associated withJob satisfaction
Table 3Probit-Mg Effects All Workers-Honduras 18-64 years oldDependent Variable: Job Satisfaction
(6)Salaried_small -0.0398*
(0.0229)Salaried_lg_nobenefits -0.0073
(0.0211)Salaried_lg_benefits 0.0617*
(0.0344)Hours (monthly) 0.0002**
(0.0001)Manufacturing -0.016
(0.0302)Const,retail,transport 0.0204
(0.0274)utilities, insurance and soc. serv. 0.011
(0.0278)Stressful -0.0183
(0.0142)Dangerous -0.0084
(0.0155)Monotonous -0.0558***
(0.0202)Progress Opportunity 0.0872***
(0.0170)Good Schedule 0.1188***
(0.0219)Well Remunerated 0.1280***
(0.0160)Insecure Job -0.0819***
(0.0211)Log Earnings (monthly) 0.0255***
(0.0080)Observations 2550Pseudo_R2 0.191
Omitted category self-employed
Job characteristics correlatewith job satisfaction in an Expected manner
Table 3Probit-Mg Effects All Workers-Honduras 18-64 years oldDependent Variable: Job Satisfaction
(6)Salaried_small -0.0398*
(0.0229)Salaried_lg_nobenefits -0.0073
(0.0211)Salaried_lg_benefits 0.0617*
(0.0344)Hours (monthly) 0.0002**
(0.0001)Manufacturing -0.016
(0.0302)Const,retail,transport 0.0204
(0.0274)utilities, insurance and soc. serv. 0.011
(0.0278)Stressful -0.0183
(0.0142)Dangerous -0.0084
(0.0155)Monotonous -0.0558***
(0.0202)Progress Opportunity 0.0872***
(0.0170)Good Schedule 0.1188***
(0.0219)Well Remunerated 0.1280***
(0.0160)Insecure Job -0.0819***
(0.0211)Log Earnings (monthly) 0.0255***
(0.0080)Observations 2550Pseudo_R2 0.191
Omitted category self-employed
Salaried small are worse off thanself-employed
Salaried at large firms arebetter off.
Results are robust to:
• Controlling for selection into employment• Results do not seem to be related to
unobservable variables correlated to job security and job category.
• Using a pseudo- fixed effect estimator to control for unobserved heterogeneity
Results change with level of education
Table 6Probit-Mg Effects by Education Level-Honduras 18-64 years old
No education level completed
Primary School Completed
High School Completed
College Completed
(1) (2) (3) (4)Salaried_small -0.0792* -0.0252 -0.0134 -0.0263
(0.0475) (0.0337) (0.0349) (0.0506)Salaried_large_nobenefits -0.0111 0.0059 0.0253 -0.0361
(0.0561) (0.0289) (0.0287) (0.0274)Salaried_large_benefits 0.0328 0.0376** -0.0167
(0.0615) (0.0180) (0.0426)Observations 754 1247 288 236Pseudo_R2 0.199 0.164 0.372 0.46Note 1: Controls in this regression are gender, age, age2, zone, levels of education. Marital status, hours worked,
health index, sector, and job attributes such as: stressful, dangerous, monotonous, progress opportunity, good schedule, well remunerated, insecure job, and optimism. Note 2: Standard errors in parentheses; *** p<0.01, ** p<0.05, * p<0.1
Results change across countries
Table 7Probit-Mg Effects All workers 18-64 years old
El Salvador Guatemala(1) (2)
Salaried_small -0.004 -0.2486***(0.0633) (0.0875)
Salaried_lg_nobenefits 0.0845* -0.1785***(0.0450) (0.0655)
Salaried_lg_benefits 0.057 0.0425(0.0565) (0.0693)
Observations 336 516Pseudo_R2 0.189 0.256Note 1: Controls in this regression are gender, age, age2, zone, levels of education. Marital status, hours worked,
health index, sector, and job attributes such as: stressful, dangerous, monotonous, progress opportunity, good
schedule, well remunerated, insecure job, and optimism.
Note 2: Standard errors in parentheses; *** p<0.01, ** p<0.05, * p<0.1
Strong preferenceFor self-employment
And education…
Table 8Probit-Mg Effects by Educacion- 18-64 years old. Other Countries.
Low Education High Education Low Education High Education(1) (2) (3) (4)
Salaried_small -0.1095 0.0425 -0.2053** -0.1463(0.1079) (0.0557) (0.0981) (0.0947)
Salaried_large_nobenefits -0.0811 0.0954* -0.1918** -0.0567(0.1364) (0.0488) (0.0772) (0.0546)
Salaried_large_benefits -0.1023 0.1210*** -0.0968 0.1371***(0.1732) (0.0437) (0.2391) (0.0463)
Observations 108 291 292 256Pseudo_R2 0.0139 0.0273 0.0359 0.0461Note 1: Low education = 1 if education 1 or education 2 are equal to 1; High education = 1 if education 3 or education 4 are equal to 1Note 2: No controls added.Note 3: Standard errors in parentheses; *** p<0.01, ** p<0.05, * p<0.1
Guatemala El Salvador
Higher preference for formal among skilled workers Lower valuation of benefits among Unskilled?
In sum
• Data suggests that unskilled workers have lower valuations of benefits.
– Lower financial/pension literacy – Cash constraints?
• They perceive payments as taxes; • Labor supply more elastic; taxes will tend to fall on
employers;• Which may explain why many unskilled workers are hired
without SS
• It may explain why so few workers blame the entrepreneurs for their lack of social security
Even if workers are better off in (some) informal jobs, informality leads to poor outcomes… • Large numbers of people possibly not
getting protected against poverty in old age.
• Do informal workers save for retirement?
• Informality renders labor policy ineffective.
• How to implement unemployment insurance, or protect workers against accidents or disability?
Part II: Informality lowers productivity
based on “Informality, Resource
Misallocation and Productivity in Brazil”
Carpio and Pagés (2009)
(A) channel: Informality leads to resource misallocation
• TFP (formal) > TFP (informal) firms. • Informal and formal firms produce goods
that are substitutes to some degree. • Informality is a subsidy on less productive
firms, allowing them to sell products to a lower price than they would if they paid taxes and regulations.
• This increses their market share• And reduces aggregate productivity.
Data
• Use a large and detailed sample of almost 39000 small firms in Brazil (less than 5 paid workers). Urban Informal economy 2003 (ECINF)
• It covers employers with less than 5 employees and self-employed workers, irrespective of the number of non-remunerated employees or partners.
• Definition of formality:
– Formal firms: Pay income tax– Informal firms: Do not pay income tax
We measure TFP and marginal product of capital and labor in each firm following Hsieh and Klenow (2009)
• Assumes CRS production function with shares computed from cost shares for each sector.
• If all firms in efficient allocation:
• MPK(i)=R• MPL(i)=w
• Departures from this indicate allocative problems.
Productivity (TFP) is higher in formal firms no matter how we measure it
Payroll: sum of wages for employees and self-employed without unpaid workers, excluding social security payments. We attribute wages to unpaid workers by using a Mincer regression. Capital: the value of capital stock at its market value.
0.1
.2.3
.4
kdensity logA
si
-6 -4 -2 0 2Log(Asi)
Registered Unregistered
Source: Based on Ecinf 2003
Mean difference55%
We measure the difference between MPL or MPK as a firm specific wedge.
Distortions that affect the price of Y relative to L
Distortions that affect the price of Y relative to L
Simple argument:
• If formal firms are characterized by high MPL and MPK it indicates that hiring more labor and more K would increase overall output and TFP.– Formal sector too small, Informal sector too large
• Instead, if MPL and MPK is higher in informal firms, it indicates they face constraints to growth. Productivity would increase if informal firms grew.
0
.2.4
.6.8
kdensity logT
FP
Rsi
-4 -2 0 2 4Log(TFPRsi)
Registered Unregistered
Source: Based on Ecinf 2003
On average, informal firms in Brazil are more constrained in their growththan formal firms.
In Brazil, high marginal products more likely among formal firms…
Bottom line…
• A larger number of formal firms should be larger than they are (they are taxed above average)
• A larger number of informal firms should be smaller than they are (they are relatively subsidized by not paying taxes)
• Since formal firms are more productive, the fact that they are too small reduces aggregate productivity.
• Other possible channels at play (less access to K & less innovation of informal firms)
A more proactive approach needed
• Creating social security and labor systems which are informality-proof (delinking them from the labor market, particularly for unskilled labor).
• Reducing the costs and increasing benefits of formalization
– Credit can help
Credit can help
• Catao and Pagés (2009).• Higher access to credit increases the
opportunity cost of informality• We explore an episode of increased supply
of credit in Brazil.• We find that formality rates (SS affiliation)
increased faster in sectors that are more credit dependent, and therefore benefit more from credit.
Conclusions
• Self-employed workers may not be worse off than salaried formal workers.
• Salaried workers in small firms tend to be less happy about their jobs.
• Higher preference for self-employment and lower for SS benefits for less skilled workers.
• Yet, informality even if optimal from an individual point of view is socially suboptimal
Conclusions
• Informality lowers productivity– How much?
• Informality renders social and labor policy ineffective
• State needs to be more proactive to deal with informality– Reducing costs of formality– Increasing benefits of being formal– Designing social security and labor policies
which are more informality-proof.
Ideas for when reviewing Madrigal Pages:
• Do fixed effect estimator by level of education
Ideas for when reviewing Carpio Pages:
• A few informal firms seem to have very high MPK and L.