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Introduction Econometrics

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Title: Introduction Econometrics


1
Introduction Econometrics
  • José A. Pagán
  • Professor of Economics and Director
  • Institute for Population Health Policy
  • The University of Texas-Pan American

2
Introduction
  • Econometrics means economic measurement
  • It combines economic theory, mathematical
    economics, economic statistics and mathematical
    statistics
  • economic theory (e.g., when price goes up,
    quantity demanded goes down)
  • mathematical economics (e.g., express economic
    theory using math)
  • economic statistics (data)
  • mathematical statistics

3
Classical methodology
  • Statement of theory or hypothesis
  • Specification of mathematical model
  • Specification of econometric (statistical) model
  • Obtain data
  • Estimate parameters of the model
  • Hypothesis testing
  • Forecasting
  • Use the model for policy

4
Example Keynesian theory of consumption
  • 1. Statement of theory or hypothesis
  • 0ltMPClt1
  • 2. Specification of mathematical model
  • Y ß1 ß2X 0 lt ß2 lt 1
  • 3. Specification of econometric (statistical)
    model
  • Y ß1 ß2X u
  • 4. Obtain data
  • See Table I.1, page 6.

5
Example Keynesian theory of consumption (2)
  • 5. Estimate parameters of the model
  • Y -184.08 0.7064Xi
  • 6. Hypothesis testing
  • Is 0.70 statistically less than 1?
  • 7. Forecasting
  • If X19977269.8 then Y 4951.3167
  • 8. Use the model for policy
  • Pick value of X to get desired value of Y (Y and
    X are called target and control variables,
    respectively)

6
Chapter 1 The nature of regression analysis
  • Galtons regression to mediocrity
  • Regression analysis study of the dependence of
    one variable (the dependent variable) on one or
    more other variables (the explanatory variables)
  • The goal is to predict the mean value of the
    dependent variable based on known values of the
    explanatory variables
  • Example 1 Fathers and sons heights (Fig. 1.1,
    P. 18)
  • Example 2 Education and earnings (human capital
    function)

7
Chapter 1 The nature of regression analysis (2)
  • In regression analysis we are interested in
    statistical dependence among variables, not in
    deterministic relationships.
  • Regression analysis deals with dependence but not
    necessarily with causation.
  • Regression is different from correlation in the
    sense that we define a dependent variable
    (random) and an explanatory variable (fixed)
    whereas in correlation both variables are random.
  • A random (or stochastic) variable is a variable
    that can take any set of values, with a given
    probability.

8
Types of data
  • Time series data (data collected daily, monthly,
    yearly)
  • daily stock market data, monthly unemployment
    rates
  • Cross-sectional data (data collected at one point
    in time)
  • a one-time household survey, a poll
  • Pooled (cross-sectional observations collected
    over time, but they dont have to be the same
    person, firm, etc.)
  • combining data from say a yearly household survey
    over multiple years
  • Longitudinal/panel data (data from the same
    cross-sectional units collected over time)
  • collecting data on the same persons over time
    (e.g., the National Longitudinal Survey of Youth
    Health and Retirement Study)

9
Chapter 2 Two-variable regression analysis
  • Unconditional expected value E(Y)
  • Conditional expected value E(Y X)
  • A population regression curve is simply the locus
    of the conditional means of the dependent
    variable for the fixed values of the explanatory
    variables
  • Conditional expectation function (population
    regression) E(Y Xi) f(Xi)
  • Population regression function could be something
    like E(Y Xi) Y ß1 ß2Xi
  • ß1 and ß2 are called regression coefficients

10
Chapter 2 Two-variable regression analysis (2)
  • Linear regression means a regression that is
    linear in the parameters
  • A linear regression can be non-linear in the
    variables
  • Example Y ß1 ß2X2
  • A linear regression must be linear in the
    parameters
  • Some non-linear regression models can be
    transformed into a linear regression model (e.g.,
    YaXbZc can be transformed into lnY ln a bln
    X cln Z)

11
Chapter 2 Two-variable regression analysis (3)
  • Deviation of an individual Yi around its expected
    value is given by
  • ui Yi - E(Y Xi), or Yi E(Y Xi) ui
  • If we take the expected value on both sides of
    the equation above, we get that E(ui Xi) 0
  • Thus, the assumption that the regression line
    passes through the conditional means of Y implies
    that the conditional mean values of ui are zero
  • Disturbance term ui captures all the variables
    omitted from the model. Possible reasons include
  • Vagueness of theory
  • Unavailability of data
  • Core variables versus peripheral variables
  • Intrinsic randomness in human behavior
  • Poor proxy variables
  • Principle of parsimony
  • Wrong functional form

12
Chapter 2 Two-variable regression analysis (4)
  • Lets now move from the population to the sample
  • Sample regression function Yi ß1 ß2Xi
  • Yi estimator of E(Y Xi) ß1 estimator of
    ß1 ß2 estimator of ß2
  • Estimator rule, formula or method that tells us
    how to estimate the population parameter
  • Estimate particular numerical value obtained
    using the estimator
  • Note that Yi ß1 ß2Xi ui
  • ui residual term (it is an estimate of ui).
  • Our main objective in regression analysis is to
    estimate the population regression function using
    the sample regression function.
  • Can we devise a rule that will make our sample
    regression function as close as possible to the
    population regression function?
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