Postgraduate taught 

Financial Engineering MSc

Modelling and Forecasting Financial Time Series ECON5022

  • Academic Session: 2024-25
  • School: Adam Smith Business School
  • Credits: 20
  • Level: Level 5 (SCQF level 11)
  • Typically Offered: Semester 2
  • Available to Visiting Students: No
  • Collaborative Online International Learning: No

Short Description

The course offers an introduction to modelling and forecasting financial time series. The first part of the course will be mainly devoted to analysing univariate models for the conditional mean and the conditional variance (ARMA and GARCH models). These models will be used to produce forecasts. Additional topics, e.g. multiple time series analysis and nonlinear models may be discussed, if time allows. In the second part of the course will discuss forecasts evaluation, aimed to monitor and improve forecast performances. The course will be complemented by practical session using statistical or econometric software.

Timetable

10 x 2-hour lectures

3 x 2-hour tutorials

4 x 2-hour labs

An additional 2-hour revision lecture.

Excluded Courses

None

Assessment

Written assignment. Students will be required to work in groups (25% of final grade for course)..

Two-hour end-of-course examination (75% of final grade for course).

 

Assessment

Weighting

Duration/Word Count

Group Assignment

25%

 

Main Assessment In: April/May

Course Aims

The first aim of the course is to introduce the basic models widely used to analyse and forecast financial time series. The second aim is to evaluate the forecast produced using these models.

Intended Learning Outcomes of Course

By the end of this course, students will be able to:

1. Select and fit the appropriate model to analyse financial time series.

2. Derive the main properties of the models used to analyse and forecast financial time series.

3. Produce optimal forecasts for a given information set and forecast horizon.

4. Evaluate critically the forecasts.

5. Model and predict financial time series using statistical/econometric software.

6. Work collaboratively in a group to produce a combined output, by liaising with other class members, allocating tasks and co-ordinating.

Minimum Requirement for Award of Credits

Students must submit at least 75% by weight of the components (including examinations) of the course's summative assessment.