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Forecasting Methods and Time Series

Code: 2MADSAD09     Acronym: MPST

Keywords
Classification Keyword
OFICIAL Statistics

Instance: 2013/2014 - 2S (of 10-02-2014 to 06-06-2014) Ícone do Moodle

Active? Yes
Responsible unit: Agrupamento Científico de Matemática e Sistemas de Informação
Course/CS Responsible: Master in Modeling, Data Analysis and Decision Support Systems

Cycles of Study/Courses

Acronym No. of Students Study Plan Curricular Years Credits UCN Credits ECTS Contact hours Total Time
MADSAD 21 Bologna Official Syllabus 1 - 7,5 56 202,5

Teaching language

Portuguese

Objectives

The aim of this course is to introduce the students to time series analysis methods.


Learning outcomes and competences

By the end of the course, the student should:

1. understand basic time series concepts and terminology
2. be able to select time series methods appropriate to forecast
3. be able to use apropriate software
4. be able to concisely summarize results of a time series analysis

Working method

Presencial

Program

1. Introduction: the time series concept, the aims of time series analysis, examples of time series. Descriptive analysis: cronogram, identification and removal of trend and seazonal components, transformations. Fundamentals of stochastic processes: definition; stationarity; weak stationarity; autocovariance and autocorrelation
functions, partial autocorrelation function; linear difference equations. Estimating the mean and the
autocovariance and autocorrelation functions. Measuring the precision of predtions.

2. Exponential smoothing methods. Moving averages. Simple exponential smoothing. Double exponential smoothing. Triple exponnetial smoothing.

3. Time series decomposition. Decomposition models: additive and multiplicative; Loess; "bureau of census"; STL. Prediction.

4. Stationary linear time series models: autorregressive models (AR), moving average models (MA), ARMA and SARMA models. Models for linear non stationary time series: ARIMA and SARIMA models. Prediction. Box-Jenkins approach to time series analysis: identification, estimation, model checking. Regression and time series.

5. Unit roots.

Mandatory literature

Box, G.E.P., Jenkins, G.M. e Reinsel, G.C. ; Time Series Analysis: Forecasting and Control. 3ª ed., John Wiley & Sons, 1993
Makridakis, S., Wheelright, S. e Hyndman, R. ; Forecasting: Methods and Applications. 2ª ed., John Wiley and Sons , 1996
Brockwell, P.J. e Davis, R.A. ; ntroduction to Time Series and Forecasting, Springer-Verlag, 1996
Hamilton, J.; Time Series Analysis., Princeton University Press , 1994
Lutkepohl, H. e Kratzig, M. ; Applied Time Series Econometrics., Cambridge University Press , 2004

Teaching methods and learning activities

Classes; example classes and laboratory classes.

Software

R project
R project

keywords

Physical sciences > Mathematics > Statistics

Evaluation Type

Distributed evaluation with final exam

Assessment Components

Designation Weight (%)
Exame 50,00
Trabalho escrito 50,00
Total: 100,00

Calculation formula of final grade

Exam 50% + Project 50%.

Minimum grade of 7/20 for each of the components. If a student obtains a mark less than 7/20 (the minimum), his final mark will be 7.

Classification improvement

The student must present himself to exam and resubmit a project.

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