Postgraduate Course: Time Series Analysis (MATH11062)
Course Outline
| School | School of Mathematics | 
College | College of Science and Engineering | 
 
| Course type | Standard | 
Availability | Available to all students | 
 
| Credit level (Normal year taken) | SCQF Level 11 (Postgraduate) | 
Credits | 7.5 | 
 
| Home subject area | Mathematics | 
Other subject area | Financial Mathematics | 
   
| Course website | 
None | 
Taught in Gaelic? | No | 
 
| Course description | This half-course aims to provide student with an introduction to time series analysis, including models with applications in finance. Presenting the material in the form of a specific half-module allows for greater flexibility and makes it available to postgraduate students on other programmes who would benefit. | 
 
 
Entry Requirements (not applicable to Visiting Students)
| Pre-requisites | 
 | 
Co-requisites |  | 
 
| Prohibited Combinations |  | 
Other requirements |  None | 
 
| Additional Costs |  None | 
 
 
Information for Visiting Students 
| Pre-requisites | None | 
 
| Displayed in Visiting Students Prospectus? | Yes | 
 
 
Course Delivery Information
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| Delivery period: 2012/13  Semester 2, Not available to visiting students (SS1) 
  
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WebCT enabled:  No | 
Quota:  None | 
 
	
		| Location | 
		Activity | 
		Description | 
		Weeks | 
		Monday | 
		Tuesday | 
		Wednesday | 
		Thursday | 
		Friday | 
	 
| No Classes have been defined for this Course |  
| First Class | 
First class information not currently available |  
| No Exam Information | 
 
Summary of Intended Learning Outcomes 
On completion of this course the student should be able to: 
- demonstrate knowledge of, and a critical understanding of, the main concepts of time series analysis 
- demonstrate knowledge of, and a critical understanding of, the main properties of MA, AR, ARMA, ARIMA, and RW models 
- use least squares, maximum likelihood and other methods to fit time series models to the data 
- select proper model(s) using e.g. AIC or BIC 
- fit trend and seasonal trend to the data, and fit time series models to the residuals 
- understand methods used to produce forecasts 
- understand ARCH, GARCH and other nonlinear time series models and their applications for modelling of financial data 
- understand time series data well, and perform basic calculations and summaries of time series data 
- understand and critically assess time series models fitted by computer packages 
- use a range of time series models to produce forecasts 
- communicate meaningfully and productively with others (including practitioners and professionals in the financial services industry) on time series analysis issues   
- Demonstrate the ability to earn independently 
- Manage time, work to deadlines and prioritise workloads. | 
 
 
Assessment Information 
| Examination 100%.  Examination to take place at Heriot-Watt University. |  
 
Special Arrangements 
| None |   
 
Additional Information 
| Academic description | 
Not entered | 
 
| Syllabus | 
Not entered | 
 
| Transferable skills | 
Not entered | 
 
| Reading list | 
Not entered | 
 
| Study Abroad | 
Not entered | 
 
| Study Pattern | 
Not entered | 
 
| Keywords | TSA | 
 
 
Contacts 
| Course organiser | Dr Sotirios Sabanis 
Tel: (0131 6)50 5084 
Email:  | 
Course secretary | Mrs Kathryn Mcphail 
Tel: (0131 6)50 4885 
Email:  | 
   
 
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© Copyright 2012 The University of Edinburgh -  6 March 2012 6:17 am 
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