Introduction to microeconometrics

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Presentation transcript:

Introduction to microeconometrics Datathon APSU, Dhaka 9 November 2017 Introduction to microeconometrics Carlo Azzarri IFPRI

Overview 1. Purpose and scope of econometrics 2. Type of data 3. Causality 4. Type of models 5. Simple linear regression model

1. Purpose and scope of econometrics Estimating economic and behavioral relationships Testing economic and behavioral theories Evaluating programs/policy Forecasting ....in general finding association among phenomena

2. Type of data Cross-section  Time series  Cross-section (different unit) over time: pooled cross-section  Cross-section (same unit) over time: panel (longitudinal)  Non-experimental (observational) vs/ experimental

Causality ALL econometric applications must be extremely cautious on: Problem of other factors being equal Problem of spurious correlation

Type of models Linear regression (simple, multiple): OLS, IV and 2SLS Simultaneous equation Binary regression: again OLS (LPM) Limited dependent variable: binary response probit and logit, multinomial probit and logit, tobit and censored regression, count (poisson), sample selection (heckit) Advanced time series: Infinite distributed lag, ARDL, ECM

Simple linear regression model /1 The basic model (simplest case) is: y=β0+ β1x + u (1) where y is the dependent variable x is the independent variable u is the error term (or unobserved disturbance) What do β0 and β1 represent? u can also be viewed as unobserved factor

Simple linear regression model /2 Let’s assume that Δu=0 (holding other factors in u unchanged): Δy=β1·Δx Then, β1 is the slope parameter (linear relationship between x and y) and β0 is the intercept parameter. β1 is the most interesting parameter in econometrics

Simple linear regression model /3 Let’s go back on (1). Now let’s assume E(u)=0 how far is it from reality? Is this condition enough for (1) to be valid? What about u being not linearly correlated with x (x², log x,...)? E(u|x)=E(u)=0 (2) This is the zero conditional mean assumption Zero conditional mean assumption: for any given value of x, the average of the unobservables is the same and therefore must equal the average value of u in the entire population

Simple linear regression model /4 Taking the E(.) of (1) (cond. on x) and using (2): E(y|x)= β0+β1x population regression function (PRF) linear in x. Graph one-unit increase in x changes the expected value of y by the amount β1