20236 - TIME SERIES ANALYSIS OF ECONOMIC-FINANCIAL DATA
CLMG - M - IM - MM - AFC - CLAPI - CLEFIN-FINANCE - CLELI - ACME - DES-ESS - EMIT
Department of Decision Sciences
Course taught in English
SONIA PETRONE
Course Objectives
The analysis of dynamic phenomena is extremely important in economic and financial studies. The aim of the course is to provide knowledge of the classical statistical procedures for time series analysis, but also of more modern techniques, based on dynamic linear models (or state-space models). The course intends to provide a solid methodological background and data-analysis skill, with lectures in the computer room and individual and team work. The software is R, freely available at http://www.r-project.org//. A new user-friendly R-package, dlm, has been developed for this course, for classical and Bayesian analysis of time series by dynamic linear models.
Course Content Summary
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Descriptive techniques. Decomposition of a time series; trends, seasonality, cycle. Moving average models. Nonparametric techniques
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Exponential smoothing. Forecast and model comparison
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Stochastic models. Stationary processes. Markov chains (basic notions). ARMA and ARIMA models (basic notions).
Parte II. Dynamic linear models for time series analysis.
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State space models for time series analysis. Examples: non-stationary series; series with structural breaks; series with stochastic volatility; multivariate time series.
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Hidden Markov models. Dynamic linear models.
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Estimation, forecasting and control. Kalman filter.
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Examples and applications to economic and financial time series Dynamic linear models for trend, seasonality, cycle. Dynamic regression by dlm.
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Maximum likelihood estimation of unknown parameters.
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Bayesian inference. Conjugate analysis. Unknown covariance matrices: simple models (discount factors).
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Analysis of multivariate time series (multivariate ARMA models; dynamic regression (estimation of the term structure of interest rates), models for macroeconomic variables).
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Bayesian inference and forecasting via Markov chain Monte Carlo (MCMC). Recent developments.
Detailed Description of Assessment Methods
There are no partial exams. Instead, there are take-home assignments (about everytwo weeks), and an elective final individual or team work on the analysis of real data. The exam consists in a written proof and possibly an oral individual exam.
Textbooks
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C. CHATFIELD, The Analysis of Time Series, Chapman & Hall/ CRC, 2004, 6th ed.
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G. PETRIS, S. PETRONE, P. CAMPAGNOLI, Dynamic Linear Models with R, Springer, New York, 2009
Teaching material, lecture notes, data sets, examples, R code etc are available on the e-learning space of the course.
R is freely available at http://www.cran.r-project.org/