This lecture covers the Direct LiNGAM Algorithm, which involves initializing a list, performing least squares regression, finding the most independent variable, and determining the causal order. It also discusses the estimation of causal orders and the minimization of residuals.
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Covers the basics of linear regression, including OLS, heteroskedasticity, autocorrelation, instrumental variables, Maximum Likelihood Estimation, time series analysis, and practical advice.
Covers the basics of linear regression, OLS method, predicted values, residuals, matrix notation, goodness-of-fit, hypothesis testing, and confidence intervals.
Explores heteroskedasticity in econometrics, discussing its impact on standard errors, alternative estimators, testing methods, and implications for hypothesis testing.