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Department of Mathematical Sciences, Unit Catalogue 2011/12


MA50085: Time series

Click here for further information Credits: 6
Click here for further information Level: Masters UG & PG (FHEQ level 7)
Click here for further information Period: Semester 2
Click here for further information Assessment: CW 25%, EX 75%
Click here for further information Supplementary Assessment: Like-for-like reassessment (where allowed by programme regulations)
Click here for further information Requisites:
Click here for further information Description: Aims & Learning Objectives:
Aims:
To introduce a variety of statistical models for time series and cover the main methods for analysing these models. To facilitate an in-depth understanding of the topic.
Objectives: At the end of the course, the student should be able to:
* Compute and interpret a correlogram and a sample spectrum;
* derive the properties of ARIMA and state-space models;
* choose an appropriate ARIMA model for a given set of data and fit the model using an appropriate package;
* compute forecasts for a variety of linear methods and models;
* demonstrate an in-depth understanding of the topic.

Content:
Introduction: Examples, simple descriptive techniques, trend, seasonality, the correlogram. Probability models for time series: Stationarity; moving average (MA), autoregressive (AR), ARMA and ARIMA models. Estimating the autocorrelation function and fitting ARIMA models. Forecasting: Exponential smoothing, Forecasting from ARIMA models. Stationary processes in the frequency domain: The spectral density function, the periodogram, spectral analysis. State-space models: Dynamic linear models and the Kalman filter.
Click here for further informationProgramme availability:

MA50085 is Optional on the following programmes:

Department of Mathematical Sciences
NB. Programmes and units are subject to change at any time, in accordance with normal University procedures.