m01 stockwatson123635 03 econ part01

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    Copyright 2011 Pearson Addison-Wesley. All rights reserved.

    Introductionto Econometrics

    Chapters 1, 2 and 3

    The statistical analysis of

    economic (and relateddata

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    Brief Overview of the Course

    ! "conomics s#ggests important relationships$ often%ith policy implications$ t virt#ally nevers#ggests '#antitative magnit#des of ca#saleffects.

    What is the quantitativeeffect of red#cing class si)e onst#dent achievement*

    +o% does another year of ed#cation change earnings*

    What is the price elasticity of cigarettes*

    What is the effect on o#tp#t gro%th of a 1 percentage

    point increase in interest rates &y the ,ed* What is the effect on ho#sing prices of environmental

    improvements*

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    This course is about using data tomeasure causa effects!

    ! deally$ %e %o#ld lie an e/periment

    What %o#ld &e an e/periment to estimate the effect of classsi)e on standardi)ed test scores*

    ! #t almost al%ays %e only have o&servational(none/perimental data.

    ret#rns to ed#cation

    cigarette prices

    monetary policy

    ! ost of the co#rse deals %ith diffic#lties arising from #singo&servational to estimate ca#sal effects

    confo#nding effects (omitted factors sim#ltaneo#s ca#sality

    correlation does not imply ca#sation3

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    ! 4earn methods for estimating ca#sal effects #singo&servational data

    ! 4earn some tools that can &e #sed for other p#rposes5 fore/ample$ forecasting #sing time series data5

    ! ,oc#s on applications theory is #sed only as needed to#nderstand the %hys of the methods5

    ! 4earn to eval#ate the regression analysis of others thismeans yo# %ill &e a&le to read6#nderstand empiricaleconomics papers in other econ co#rses5

    ! 7et some hands-on e/perience %ith regression analysis inyo#r pro&lem sets.

    In this course #ou wi$

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    ! Empirica probem$ Class si)e and ed#cationalo#tp#t

    Policy '#estion8 What is the effect on test scores (orsome other o#tcome meas#re of red#cing class si)e &y

    one st#dent per class* &y 9 st#dents6class* We m#st #se data to find o#t (is there any %ay to ans%er

    this withoutdata*

    &eview of 'robabiit# and (tatistics)(* Chapters 2, 3+

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    The Caifornia Test (core ata (et

    All :-; and :-9 California school districts (n< =20

    >aria&les8

    ! ?PthP

    grade test scores (@tanford- achievement test$com&ined math and reading$ district average

    ! @t#dent-teacher ratio (@TB < no. of st#dents in thedistrict divided &y no. f#ll-time e'#ivalent teachers

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    Initia oo/ at the data$(You should already know how to interpret this table)

    This ta&le doesnt tell #s anything a&o#t the relationship&et%een test scores and the STR.

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    o districts with smaer casses havehigher test scores

    (catterpot of test score v. st#dent-teacher ratio

    What does this figure show?

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    *e need to get some numerica evidence on whetherdistricts with ow (T&s have higher test scores but how

    1. Compare average test scores in districts %ith lo% @TBs to

    those %ith high @TBs (estimation3

    2. Test the n#ll3 hypothesis that the mean test scores in the

    t%o types of districts are the same$ against the

    alternative3 hypothesis that they differ (hypothesistesting3

    D. "stimate an interval for the difference in the mean test

    scores$ high v. lo% @TB districts (confidence interval3

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    Initia data ana#sis$ Compare districts %ith small3 (@TB E20 and large3 (@TB F 20 class si)es8

    1. Estimationof < difference &et%een gro#p means

    2. Test the hypothesisthat < 0

    3. Constr#ct a confidence intervalfor

    Class @i)e Average score

    (

    @tandard deviation

    (sY

    n

    @mall ;?G.= 1.= 2D9

    4arge ;?0.0 1G. 192

    Y

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    1! Estimation

    <

    < ;?G.= ;?0.0

    < G.=s this a large difference in a real-%orld sense*

    @tandard deviation across districts < 1.1

    Hifference &et%een ;0PthPand G?PthPpercentiles of test

    score distrition is ;;G.; ;?.= < 9.2 This is a &ig eno#gh difference to &e important for school

    reform disc#ssions$ for parents$ or for a school

    committee*

    1n

    small

    Yi

    i=1

    nsmall

    Ysmall Ylarge

    1n

    large

    Yi

    i=1

    nlarge

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    2! 5#pothesis testing

    t=Ys Y

    l

    ss2

    ns

    + sl2

    nl

    =Ys Y

    l

    SE(Ys Y

    l)

    Hifference-in-meanstest8 comp#te the t-statistic$ (remem&er this*

    ! %here SE( is the standard error3 of $

    the s#&scripts sand lrefer to small3 and large3

    @TB districts$ and (etc.

    Ys Yl Ys Yl

    ss

    2

    =

    1

    ns 1(Y

    iYs

    )2

    i=1

    ns

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    Comp#te the difference-of-means t-statistic8

    < =.0?

    ItI J 1.;$ so reKect (at the ?L significance levelthe n#ll hypothesis that the t%o means are thesame.

    @i)e sY n

    small ;?G.= 1.= 2D9

    large ;?0.0 1G. 192

    Y

    t=Ys Ylss2

    ns

    + sl2

    nl

    =657.4 650.0

    19.42

    238+ 17.9

    2

    182

    =7.4

    1.83

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    3! Confidence interva

    A ?L confidence interval for the difference &et%eenthe means is$

    ( M 1.;NSE(

    < G.= M 1.;N1.9D < (D.9$ 11.0

    Two equivalent stateents!1. The ?L confidence interval for doesnt incl#de 05

    2. The hypothesis that < 0 is reKected at the ?L level.

    Yl

    Ys

    Yl

    Ys

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    *hat comes ne6t7

    ! The mechanics of estimation$ hypothesis testing$and confidence intervals sho#ld &e familiar

    ! These concepts e/tend directly to regression andits variants

    ! efore t#rning to regression$ ho%ever$ %e %illrevie% some of the #nderlying theory ofestimation$ hypothesis testing$ and confidenceintervals8 Why do these proced#res %or$ and %hy #se these rather

    than others*

    We %ill revie% the intellect#al fo#ndations of statisticsand econometrics

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    &eview of (tatistica Theor#

    1. The probabiit# framewor/ for statistica inference

    2. "stimation

    D. Testing

    =. Confidence ntervals

    The probabiit# framewor/ for statistica inference

    a Pop#lation$ random varia&le$ and distrition

    & oments of a distrition (mean$ variance$ standarddeviation$ covariance$ correlation

    c Conditional distritions and conditional meansd Histrition of a sample of data dra%n randomly from a

    pop#lation8 Y1$ O$ Yn

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    )a+ 'opuation, random variabe, anddistribution

    Population

    ! The gro#p or collection of all possi&le entities of interest(school districts

    ! We %ill thin of pop#lations as infinitely large ( is an

    appro/imation to very &ig3

    Random variable Y

    ! Q#merical s#mmary of a random o#tcome (district averagetest score$ district @TB

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    Population distribution of Y

    ! The pro&a&ilities of different val#es of Ythat occ#rin the pop#lation$ for e/. PrRY< ;?0S (%hen Yisdiscrete

    ! or8 The pro&a&ilities of sets of these val#es$ for e/.PrR;=0 Y ;;0S (%hen Yis contin#o#s.

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    )b+ 8oments of a popuation distribution$ mean,variance, standard deviation, covariance,correation

    mean< e/pected val#e (e/pectation of Y

    < E(Y

    < Y

    < long-r#n average val#e of Yover repeatedreali)ations of Y

    variance < E(Y YP2P