| Area: | Department of Mathematics and Statistics | 
|---|---|
| Credits: | 25.0 | 
| Contact Hours: | 3.0 | 
| ** The tuition pattern below provides details of the types of classes and their duration. This is to be used as a guide only. For more precise information please check your unit outline. ** | |
| Lecture: | 3 x 1 Hours Weekly | 
| Anti Requisite(s): | 304193 (v.3)
   		Time Series Modelling 504
	
			or any previous version | 
| Prerequisite(s): | 302315 (v.2)
   		Mathematical Statistics 202
	
			or any previous version | 
| Syllabus: | Exponential smoothing methods to forecast non-seasonal and seasonal time series. Stochastic time series models and fundamental concepts. Invertibility and stationarity, autocorrelation and partial autocorrelation, identification and estimation in non-seasonal ARIMA models, forecasting and diagnostic checking. Seasonal time series models. Intervention analysis and outlier detection. Multivariate time series, vector ARMA and state-space modelling. | 
| ** To ensure that the most up-to-date information about unit references, texts and outcomes appears, they will be provided in your unit outline prior to commencement. ** | |
| Field of Education: | 010101 Mathematics | 
| SOLT (Online) Definitions*: | Not Online *Extent to which this unit or thesis utilises online information | 
| Result Type: | Grade/Mark | 
Availability Information has not been provided by the respective School or Area. Prospective students should contact the School or Area listed above for further information.