Module Information

Module Identifier
ABM1720
Module Title
Financial Econometrics
Academic Year
2021/2022
Co-ordinator
Semester
Semester 2
Other Staff

Course Delivery

 

Assessment

Due to Covid-19 students should refer to the module Blackboard pages for assessment details

Assessment Type Assessment length / details Proportion
Semester Assessment 1 Hours   Class test  MCQ  20%
Semester Assessment Written Report - Empirical project  (2500 words)  30%
Semester Exam 3 Hours   (Unseen Book)  50%
Supplementary Assessment Written Report - Empirical project  (1500 words)  30%
Supplementary Assessment 1 Hours   Class test  MCQ  20%
Supplementary Exam 3 Hours   (Unseen Book)  50%

Learning Outcomes

On successful completion of this module students should be able to:

1. Estimate and interpret classical linear regression models.

2. Explain the consequences of the failure of the classical regression assumptions, diagnose problems and identify solutions.

3. Specify and estimate appropriate dynamic models for univariate and multivariate time series.

4. Apply difference-in-difference and matching estimation methods.

5. Specify and estimate appropriate dynamic models.

Brief description

This module provides advanced coverage of econometric methods and practices that are used to model financial data. Although the main emphasis is on practice rather than theory, a sufficient theoretical grounding is provided to develop a critical awareness of the strengths and weaknesses of the modelling techniques that are employed. There is emphasis on the design, estimation and evaluation of appropriate econometric models using econometrics software.

Content

• Linear Regression analysis
• Testing the assumptions of a regression model
• Stationarity and non-stationarity of financial time series
• Vector autoregressive models
• Cointegration between non-stationary time series
• Modelling volatility in financial time series
• Difference-in-difference estimators, and matching estimators
• Dynamic Models: Auto regressive distributed lag and Distributed lag models

Module Skills

Skills Type Skills details
Application of Number • Develop an easy familiarity with numerical data sources and numerical data • Apply numerical data to problem solving with care and accuracy • Assess the reasonableness of and interpret numerical solutions • Support assertions/arguments with appropriately developed and presented numerical data Apply complex mathematical formulae
Communication • Develop confidence in and clarity of oral communication via example class/tutorial participation • Develop clarity and focus of written communication via development of answers to self-study questions Develop and use appropriate subject-specific vocabulary in oral and written communication
Improving own Learning and Performance • Identify and distil the key issues covered by lectures, tutorials and self-study • Identify and use a range of learning resources • Investigate benefits of small group working on self-study Structure study to accommodate intensive learning
Information Technology • Use a variety of electronic web- and library-based resources to review available information and retrieve pertinent information Use spreadsheet software to complete elements of the self-study (e.g., for ease of tabulated numerical calculations, production of summary statistics, production of graphs, etc.)
Personal Development and Career planning • Preparation for seminar tasks will encourage initiative, independence and self-awareness • Identify a variety of potential career opportunities within the financial and professional services sector.
Problem solving • Identify the precise problem to be solved • Assess which data are pertinent to the problem • Recognize that alternative solution methods might be available • Select and apply appropriate methods for solving the problem Assess the reasonableness of problem solutions and interpret those solutions
Research skills • Identify which information sources are available to: o facilitate module study (understanding, wider reading) o provide data which allow application of module learning in a real world context Properly reference/attribute information sources
Subject Specific Skills Develop competence in understanding and appropriately applying advanced level econometrics models to practice. • Develop competence in understanding the use of classical linear regression in estimation and inference • Develop competence in understanding both the advantages and shortcomings of panel data and the techniques for estimation of panel data models and their application.
Team work Develop experience of team work and develop team working skills via small group working on self-study

Notes

This module is at CQFW Level 7