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21201408 STATISTICAL METHODS FOR ECONOMETRICS in Economics LM-56 N0 NACCARATO ALESSIA
(syllabus)
Some hints of statistical inference and linear algebra The multiple linear regression model. Interpretation and comparison of regression models. Least squares and maximum likelihood estimators. Heteroschedasticity and autocorrelation, multicollinearity, non-deterministic exogenous variables and instrumental variables method, incorrect model specification, stability of the regression function and use of dichotomous variables. Panel data models: fixed effect models and random effect models. Within and between estimators. Heteroschedasticity and autocorrelation tests. Dynamic models for panel data: Arellano-Bond estimator. Models with lagged variables: dynamic regression models, distributed lag models. Introduction to time series analysis: stochastic processes, stationarity and autocovariance function, moving average and integrated autoregressive processes (AR, MA, ARMA, ARIMA), the Box and Jenkins procedure.
(reference books)
Students can refer to the following texts (the first three can be considered alternative to each other) 1) Introduzione all'Econometria, J. H. Stock, M. W. Watson, Ed. Pearson 2) Econometrica, J. Johnston, Ed. Franco Angeli 3) Econometria, M. Verbeek, Ed. Zanichelli 4) Lectures on advanced econometrics, L. Pieraccini, Ed. Aracne 5) Introduction to Time Series Analysis and Forecasting, D. C. Montgomery, C. L. Jennings, M. Kulahci, Ed. Wiley
Some of the topics discussed in the course can also be found in Introductory Econometrics for Finance, C. Brooks, Cambridge University Press
For background references to statistical inference and linear algebra students can refer: Fondamenti di Inferenza Statistica, L. Pieraccini, Ed. Giappichelli Matrix Differential Calculus in Statistics and Econometrics, J. R. Magnus, H. Neudecker, Ed. Wiley Series in Probability and Statistics
For applications with R, students can refer to one of the following texts Introductory Statistics with R, P. Dalgaard, Ed. Springer An Introduction to Applied Multivariate Analysis with R, B. Everitt, T. Hothorn, Ed. Springer
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