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M.Sc. in Economics Econometrics Module I Topic 4: Maximum Likelihood Estimation Carol Newman.

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Presentation on theme: "M.Sc. in Economics Econometrics Module I Topic 4: Maximum Likelihood Estimation Carol Newman."— Presentation transcript:

1 M.Sc. in Economics Econometrics Module I Topic 4: Maximum Likelihood Estimation Carol Newman

2 Maximum Likelihood Estimation  Assumes probability distribution of function of the dependent variable is known except for a finite number of unknown parameters that we would like to estimate  MLE will produce the most efficient estimator but if the probability distribution is mis-specified estimator is inconsistent  Define probability density function for y which will depend on unknown parameters :  Describes data generating process that underlies the sample data  Joint pdf of n independently and identically distributed observations will be the produce of the individual densities:  This is the likelihood function

3 Maximum Likelihood Estimation  The likelihood principle: Choose estimator for the parameter  that maximises the likelihood of observing the actual sample given the probability density function for y  Usually work with the log-likelihood function and usually require that we condition on exogenous variables in X and a vector of parameters   This is referred to as the conditional log-likelihood equation  Application to the General Linear Model (see homework)

4 Maximum Likelihood Estimation  Asymptotic properties of the ML estimator Consistency Asymptotic efficiency (smallest variance among all consistent asymptotically normal estimators) Invariance: If is the ML estimator of and if is a continuous function, the ML estimator of is  Note: estimate of the Asymptotic Variance of the ML Estimator is the inverse of the second order derivatives of the likelihood equation

5 Maximum Likelihood Estimation  Key Terms Likelihood principle Conditional likelihood equation Gradient vector/score vector Hessian matrix Information matrix Regularity conditions MLE will produce the most efficient estimator of all consistent asymptotically normal estimators Inconsistent if likelihood equation is mis-specified Property of invariance allow re-parameterisation for simplification of estimation

6 Three Specification Testing Procedures

7 Wald Test Large values of this test statistic are inconsistent with the null hypothesis Only requires that you estimate the unrestricted model

8 Likelihood Ratio Test Estimate restricted and unrestricted model using MLE Compute the test statistic: where: Requires that you estimate the restricted and unrestricted models

9 Lagrange Multiplier Test Approach one: If the null hypothesis is true and the restrictions are valid then the lagrange multipliers associated with them will be close to zero Maximize subject to Lagrangean: LM Test statistic: Only requires that you estimate the restricted model

10 Lagrange Multiplier Test Approach two: Test whether the derivatives of the likelihood equation are close to zero when evaluated at the restricted estimates


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