Durham University
Programme and Module Handbook

Postgraduate Programme and Module Handbook 2026-2027

Module FINN41715: Econometric Methods

Department: Finance

FINN41715: Econometric Methods

Type Tied Level 4 Credits 15 Availability Available in 2026/2027 Module Cap None.
Tied to N3K109
Tied to N3K209
Tied to N3K409
Tied to N3K709
Tied to N3K309
Tied to N3KC09

Prerequisites

  • None.

Corequisites

  • None

Excluded Combination of Modules

  • None

Aims

  • to provide students with the essential econometrics skills necessary to pursue empirical research in finance;
  • to provide a basis for understanding more advanced econometric techniques to be taught in the second term of the MSc.

Content

  • This module aims to introduce the students to the modern econometric techniques and to provide hands-on experience in applying those to solve different problems in economics and finance.
  • The lectures will focus on the theory and intuition behind various techniques and in the workshops we will consider applications with real data and discuss the seminal academic papers that have introduced or employed those techniques.
  • The topics to be covered include:
  • linear regression model: ordinary least squares (OLS) estimator, OLS properties, statistical inference; violations of OLS assumptions: detection, consequences and solutions;
  • simultaneous equations model (SEM) and endogeneity: indirect least squares (ILS), two-stage least squares (2SLS), instrumental variables (IV), Hausman test;
  • panel data: fixed effects (FE) and random effects (RE) estimators, difference-in-difference (DiD) estimator;
  • machine learning: classification and regression problems, ridge and lasso regressions, bias-variance trade-off, cross-validation.

Learning Outcomes

Subject-specific Knowledge:
  • advanced knowledge of both theoretical and practical aspects of the key econometric concepts, principles and methods.
Subject-specific Skills:
  • ability to apply econometric methods to data and interpret the results;
  • ability to use the learnt econometric methods to conduct their own empirical investigations;
  • handling large datasets and using them in conjunction with the appropriate techniques to solve various problems in economics and finance;
  • using R to conduct econometric analysis, as well as to import and manipulate data.
Key Skills:
  • computer literacy and programming skills (through using R in workshops and for the project);
  • interpersonal and written communication skills (through working in a team on the written project);
  • problem solving and analytical skills (through applying learnt techniques to solve problems and interpreting estimation results);
  • planning, organising and time management skills (through meeting the multiple deadlines for formative and summative assignments of the module).

Modes of Teaching, Learning and Assessment and how these contribute to the learning outcomes of the module

  • The module is delivered through a combination of lectures and seminars to facilitate the balance of theory and practice. The practical component will be taught using R (RStudio) during the seminars.
  • The students are assessed through the summative and formative assignments. The summative assignment consists of a written group assignment and an online examination, in the format of and online synchronous timed exam. Both help students to acquire and demonstrate relevant knowledge and skills of key econometric methods, concepts and principles.
  • The formative assignment consists of an online test. The online test serves to give students to develop their skills and receive immediate feedback on their learning progress.

Teaching Methods and Learning Hours

Activity Number Frequency Duration Total/Hours Attendance Monitored
Lectures 10 1 per week 2 hours 20 Yes
Seminars 10 1 per week 1 hour 10 Yes
Preparation and Reading 120
Total 150

Summative Assessment

Component: Examination Component Weighting: 60%
Element Length / duration Element Weighting Resit Opportunity
Online synchronous timed written exam 2 hours 100%
Component: Group Project Component Weighting: 40%
Element Length / duration Element Weighting Resit Opportunity
Assignment 2000 words (max) 100% Individual 1500 word assignment

Formative Assessment:

Online test.


Students who do not attend monitored activities shown under Teaching Methods and Learning Hours, or who fail to complete the summative or formative assessment(s) specified above, may be subject to the Academic Progress procedures defined in the University's General Regulation V, and may be required to leave the University.