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Today's Agenda

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Title: Today's Agenda


1
Today's Agenda
  • Binary dependent Variable
  • Logit- Estimation and Interpretation
  • Grouped data
  • Individual data
  • Probit -Estimation and Interpretation
  • Grouped data
  • Individual data

2
CDF best describes the S shaped curve of binary
model
Z
3
Logit Model
  • Cumulative distribution function of logistic
    distribution is represented as
  • The probability of success is given by above.
    The probability of failure is given by
  • Thus as Z ranges from to infinity, P ranges
    from 0 to 1 and P is nonlinearly related to Z
    (ie. X), satisfying the requirements of a binary
    model.

4
Odds ratio
  • The ratio of the probability of success to
    probability of failure gives the odds ratio in
    favour of success.
  • Taking log of odds ratio, we are able to
    linearise the model
  • Slope coefficient here tells how the log-odds in
    favour of success change as X changes by 1 unit

5
Estimation of logit model
  • MLE estimation
  • Requires large samples
  • Instead of t statistic, z statistic is used to
    test individual significance of coefficient (Wald
    z test)
  • R2 is not meaningful, instead Count R2 or pseudo
    R2 is used
  • Count R2 no. of correct predictions/total no. of
    observations
  • pseudo R2 1-(Lmax/L0)
  • To test null hypothesis that all slope
    coefficients are simultaneously equal to zero,
    instead of F we use Likelihood ratio (LR)
    statistic. LR stat follows chi2 distribution.
  • LRChi22(-Log likelihood UR- Log likelihood R)

6
Logit Estimation
  • Individual data (logit) MLE
  • Grouped data (glogit) observed probability is
    available for each value of X
  • OLS maybe used with weights to address
    heteroscedasticity. (WLS)
  • 1. Find observed probability obtain logit for
    each X as
  • Estimate with OLS
  • Note that estimation of transformed data is
    undertaken without constant
  • Use OLS inferences

7
Interpretation
  • Take Antilog of the slope coefficient, subtract 1
    from it and multiply result by 100 to get percent
    change in odds for 1 unit change in X.
  • Probability of success at given levels of X can
    be estimated by plugging in values of x and
    estimating z values then use formula
  • Rate of change of probability ofsucess with unit
    change in X variable is got by
  • Change is not linear but depends on levels of
    probability

8
eg. income and house ownership
  • Data on income(X), Nitotal families with income
    Xi, nifamilies with houses with Xi income
  • Pini/Ni LlnPi/(1-Pi) Lweighted L
  • For 1 unit increase in income, odds of owning
    house increases by 8.1
  • How to estimate probability when X20

9
Probability calculation
  • Plugging X20 in estimated equation we obtain
    L-0.09311, dividing by weight (4.2661) we get
    L -0.2226
  • Probability of owning house at income20 is 49

10
Rate of change of probability
  • Rate of change is not constant and depends on the
    level of Income from where you are calculating
  • 0.07862(0.5056)(0.4944)
  • 0.01965
  • Rate of change of probability when income
    increases by one unit from the level of 20 units
    is 1.9

11
Try out..
  • Given WLS estimate
  • Find the probability of owning house at X40 and
    the rate of change in probability when increases
    by 1 unit from this level
  • Also given weight2 at X40.

12
Logit model for individual data
  • WLS will not work! MLE to be used..

13
Logit model for individual data
  • MLE inferences Wald test, LR and count
    Rsq/pseudo Rsq
  • Eg impact of personalised system of instruction
    on students. Y1, if gradeA otherwise Y0
  • PSI is also a dummy here
  • -13.02132.826GPA0.095TUCE2.378PSI
  • Interpretation
  • Antilog of PSI slope (10.789) gives odds of
    getting A grade if PSI1. With PSI the odds of
    getting A is 11 times higher
  • Probability of getting A Plug-in values of Xs in
    estimated MLE equation, calculate z value and use
    formula
  • Rate of change of probability

14
Try out...
  • Estimated logit
  • Find impact of X1 on odds ratio
  • Find probability when X121.29, X20.42
  • Find change in probability when X121.29, X20.42
    and X1 increases by 1 unit

15
Probit Model
  • Another CDF popularly used to model dichotomous
    model is is normal CDF. MLE estimation of normal
    CDF for dichotomous model is called as probit or
    normit
  • A probit model is defined as
  • XiB has a normal distribution and so interpreting
    probit results requires thinking in terms of Z
    (standard normal distribution)
  • Interpretation
  • Inferences are same as logit
  • Probability is obtained by plugging in values of
    X and looking up CDF table
  • Change in probability with 1 unit change in X

16
Grouped Probit
  • OLS can be used for grouped probit
  • After estimating probability, Index Ii from CDF
    is to be estinated
  • This invoves finding z from P (normal equivalent
    deviate or normit)
  • Excel com normsinv(P)
  • I will be negative for P less than 5
  • Add 5 to normit to make it Probit
  • Normit or Probit can be used as OLS dependent
    variable
  • Results do not vary except for the constant term

17
Eg
  • Estimated probit equation
  • Probability when X121.29, X20.42
  • 0.0823321.291.5290.42-3.139 -0.7440
  • Corresponding CDF probability 0.2284
  • Excel command normsdist(Z)
  • Change in probability when X1 changes by 1 unit
  • F(-0.7440)0.08233
  • Normal density function at -0.74400.3025
  • stata com normalden(z)
  • .30250.08233
  • 0.0249

18
Try out...
  • Probit estimation of Impact of income on house
    ownership
  • -1.020.05 X
  • What is the probability of owning a house if
    income6 and by how much will probability
    increase if income increases by 1 unit.
  • Normal cdf P values of -0.72 0.2357
  • Normal distribution density value of
    -0.720.307851

19
Summarising Slope interpretation
  • LRM slope coefficient measures change in average
    value of Y for a unit change in X, with all other
    variables held constant
  • LPM slope coefficient measures change in
    probability of an event occurring for a unit
    change in X, with all other variables held
    constant
  • Logit slope coefficient gives change in log of
    odds for a unit change in X. Rate of change in
    probability is given by
  • Probit Z table value of coefficient gives
    probability of success if X1 Rate of change in
    probability is given by
  • Where f( ) is the density function of the
    standard normal variable

20
Logit-Probit relationship
  • Probit coeff 1.81 Logit coeff
  • Logit coeff 0.55Probit coeff
  • LPM coeff0.25logit coeff (except constant)
  • LPM coeff0.25logit coeffconstant (for constant)

21
Some additional Variants
  • Tobit modelcombination of 0 and continuous
    variable (expenditure on housing and income)
  • Multinomial logitWhen dependent variable is
    discrete and polytomous (mode of transport)
  • Ordinal logit When dependent variable can be
    ordered (performance grades)
  • Nested logit Models were decision taking is done
    in stages in which decisions in later stages are
    limited by those made earlier
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