Home
Enquiry Form [New Window]
     

 

Qualification Details

Introduction

Lead College
Academic Staff
Who is it for?
Structure and Syllabus
Individual Professional Courses
Assessment
Planning your studies
Study materials
How you study
Study calendar
Skills & aptitudes
Duration

Applying & Registering

Entrance requirements

How to apply

Fees
Scholarship

Information&Resources

Mentor Support
Library

Prospectus

[873 KB; PDF; New window]

Programme Regulation

[489 KB ; PDF; New window]

Application Form

[91 KB; PDF; New window]

Online Application
If you wish to apply to join any of the CeFiMS programmes by distance learning, please first complete this online form and submit. [New window]

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Centre for Financial & Management Studies (CeFiMS) - University of London

Postgraduate Diploma in Quantitative Finance

Structure and Syllabus

You will choose four courses from the list below:

Econometric principles and data analysis [C330]
Econometric analysis and applications [C232]
Financial econometrics (currently under development)
Risk management: principles and applications [C223]
Derivatives
[C333]
Modelling firms and markets
[C358]

Syllabus

Quantitative methods for financial management [C219]
This course introduces some of the quantitative methods of financial management which are commonly used by financial analysts, firms’ managers and individual investors. It examines techniques for the valuation of different classes of securities, analyses criteria for guiding investment decisions, considers the measurement of asset risk and return and discusses statistical techniques of forecasting. The MICROFIT computer package is provided for regression analysis and diagnostic procedures. The aim of the course is to give students confidence and skill in the use of the mathematical and statistical methods used in the analysis of financial instruments and financial markets, including the calculation of financial market yields and prices, frequency distributions, risk and probability, correlation and regression analysis. Statistical inference, the multiple linear regression model, autocorrelation, and risk reassessment and investment are all topics covered in the course, which teaches not only the relevant theoretical concepts but, in the belief that quantitative techniques can only be learned by doing, gives abundant practice in the manipulation of numerical material with problems and exercises.

[Top]

Econometric principles and data analysis [C230]
This course examines the interaction and confrontation between economic theory and economic data. It is concerned with the use of statistical and mathematical methods in analysing economic data, with the aim of providing economic theories with sufficient empirical foundation to enable them to be verified or refuted. Central attention is given to regression analysis — the major tool of statistical analysis in econometrics, to hypothesis testing and the treatment of heteroscedasticity and autocorrelation. The MICROFIT computer package is provided for regression analysis and diagnostic procedures. Econometrics is concerned with quantifying economic relations, with the provision of numerical estimates of the parameters involved and testing hypotheses embodied in economic relationships. This course aims to provide a basic introduction to econometric analysis, to enable students to examine economic theories with empirical data. In doing so, it examines the difficulties inherent in confronting theory with economic data in order to quantify economic relationships, in dealing with errors and problems in variables which can be only observed but not controlled, and the means of compensating for uncertainty in data. Econometric principles and data analysis is extended by Econometric analysis and applications, which teaches more advanced techniques in quantitative methods. This course can be studied in its own right but normally expected to be taken as part of the MSc or Postgraduate Diploma programme which provides the theoretical background required to interpret empirical data using statistical techniques.

[Top]

Econometric analysis and applications [C232]
This is the second econometrics course that can be taken as part of the MSc. It extends the basic introduction to econometric analysis developed in the core course, Econometric principles and data analysis. This course teaches the more advanced techniques of dummy variables, lags and expectations, simultaneous equation models, non-stationarity and co-integration and forecasting. The course ends with a brief discussion of ‘further topics for econometrics’ for students who are particularly keen to develop their quantitative skills beyond the course. It assumes that students have studied the classical linear regression model at an introductory level and that are familiar with the assumptions which underlie the model. It is also assumed that they have a basic working knowledge of the econometric software, MICROFIT. There are many examples to illustrate the main themes in a way which will help you in both understanding the econometrics and putting the theory to use with data. This course aims to broaden knowledge and extend understanding of econometrics. By the end of the course students should be able to: make progress with qualitative regressors, dummy variables and the identification and estimation of simultaneous econometric models; show how lags and expectations can be incorporated in dynamic models; and forecast with both econometric and time series models.

[Top]

Financial econometrics (currently under development)
Financial markets and others generate vast amounts of data on asset returns, their volatility, and other financial variables in long and high-frequency time series. The ability to analyse market behaviour requires knowledge of the properties of time series and appropriate estimation methods. Since the early 1980s techniques for analysing time series which exhibit auto-regression have yielded important studies of financial markets, increasing our knowledge of financial variables’ volatility. In this course you study time series techniques and their application to financial markets. Before starting this course students should normally have completed the course Econometric Analysis and Applications [C232].

[Top]

Risk management: principles and applications [C223]
Risk management: principles and applications examines the techniques and the foundation of risk management in corporations. It covers the use of derivatives, portfolio allocation, the value of risk, and the management of credit risk and operations risk. This course has four main aims: to illustrate the main types of risk; to present the most important ideas and methods used in the analysis of portfolios of financial securities, (including stocks and bonds); to explain how rational investors can use financial derivatives (mainly futures and options) in order to alter the risk of their investment position; and to illustrate some more specialised risk management techniques (such as Value at Risk and Credit Risk).
Unit 1 Introduction to risk management
Unit 2 Portfolio analysis
Unit 3 Management of bond portfolios
Unit 4 Futures markets
Unit 5 Options markets
Unit 6 Risk management with options
Unit 7 Value at risk
Unit 8 Credit risk

[Top]

Derivatives (currently under development)
The expansion of financial markets since 1973 has been founded on the growth of derivatives, both over the counter derivative contracts and exchange traded contracts. It was made possible by the development of models for valuing derivatives based upon the mathematics of stochastic calculus. In this course you learn the application of those principles to the valuation of derivatives.

[Top]

Modelling firms and markets (currently under development)
You will study not only the behaviour of individual firms, but also how firms interact with each other in competitive and non-competitive markets. The course will look at models of stratgeic behaviour based on the tools of game theory and how firms inteact under conditions of imperfect formation. Please check back here soon for more information about the course. This course is currently under development. Please check back here soon for more information about the course.

 

[Top]