The Times and Sunday Times Good University Guide (2025)
Designed for Economics graduates interested in roles in financial analysis and decision-making
Lancaster University is top 10 in The Complete University Guide 2025
Are you passionate about the dynamic fields of economics and finance and intrigued by the power of data analysis? The Master of Science (MSc) in Economics, Finance, and Data Analysis at Lancaster University is a cutting-edge programme designed to equip you with the knowledge, skills, and tools to thrive in the rapidly evolving world of financial analysis and decision-making.
Course overview
The MSc in Economics, Finance, and Data Analysis is an intensive one-year programme that combines rigorous training in economic theory, financial principles, and advanced data analysis techniques. Our carefully designed curriculum provides a strong foundation in both theoretical and applied aspects of economics and finance while also emphasising the critical role of data analysis in shaping informed decision-making.
Key features
Comprehensive coursework: Our programme offers a well-rounded curriculum that covers a broad range of topics, including macroeconomics, financial economics, financial markets, econometrics and data analysis, financial modelling, risk management, and data visualisation. You will gain a deep understanding of economic principles, financial theories, and advanced statistical methods, enabling you to analyse complex economic and financial phenomena.
Data-driven approach: In today's data-centric world, proficiency in data analysis is essential. Our programme strongly emphasises developing your analytical skills through hands-on experience with industry-standard software tools and datasets. You will learn how to collect and interpret economic, finance and business datasets, enabling you to extract valuable insights and make data-driven decisions.
Faculty expertise: You will be taught by a diverse and accomplished faculty of experienced economists, finance professionals, and data scientists. Our faculty members are actively engaged in research and bring their expertise into the classroom, ensuring that you receive the most up-to-date knowledge and insights.
Practical applications: We believe in bridging the gap between theory and practice. Throughout the programme, you will have opportunities to apply your knowledge and skills to real-world problems. This practical exposure will enhance your ability to tackle complex economic and financial analysis challenges and prepare you for a successful career in various sectors, including banking, consulting, government, and research.
Our Economics Master's courses will ensure you develop a comprehensive understanding of the discipline, including advanced methods to equip you with the skills required to succeed in this ever-changing environment. In addition to specialised skills, you will also gain many transferable skills to prepare you for a successful career in a variety of sectors:
Analysis and research – the ability to critically analyse data and conduct research
Communication – presenting complex information accurately
Problem-solving – developing solutions using available data and making recommendations
Time management – the ability to produce high-quality work within set deadlines
Computing – using a range of specialist and general software packages
2:1 Hons degree (UK or equivalent) in Economics, or a related subject. Students should have completed at least one term of Economics, Mathematics and Statistics.
Graduates in non-economics subjects with a good quantitative background would also be considered and are encouraged to apply.
If you have studied outside of the UK, we advise you to check our list of international qualifications before submitting your application.
English language requirements
We may ask you to provide a recognised English language qualification, dependent upon your nationality and where you have studied previously.
We normally require an IELTS (Academic) Test with an overall score of at least 6.5, and a minimum of 6.0 in each element of the test. We also consider other English language qualifications.
Delivered in partnership with INTO Lancaster University, our one-year tailored pre-master’s pathways are designed to improve your subject knowledge and English language skills to the level required by a range of Lancaster University master’s degrees. Visit the INTO Lancaster University website for more details and a list of eligible degrees you can progress onto.
Course structure
You will study a range of modules as part of your course, some examples of which are listed below.
Information contained on the website with respect to modules is correct at the time of publication, but changes may be necessary, for example as a result of student feedback, Professional Statutory and Regulatory Bodies' (PSRB) requirements, staff changes, and new research. Not all optional modules are available every year.
Core
core modules accordion
The dissertation is a substantial piece of independent work where you can apply research techniques and relevant economic theory to a research topic. This can be an area which has attracted your attention in the course of your studies, or may be linked to an aspect of your professional working experience. You choose your topic during the second term, in consultation with the MSc Director. You are then assigned to an appropriate member of teaching staff who acts as a supervisor and gives you guidance on the structure and content of the research.
This module aims to provide tools for analysing real-life data related to economics and finance using statistical modelling and data visualisation techniques. Econometrics and data analysis are popular tools for businesses, industry, and government to use data for various problems. Therefore, students with solid economic backgrounds equipped with data analytical tools can provide unique professional skill sets.
After reviewing key concepts of data analysis and modelling, the course will provide an overview of the advanced methods and models used in modern econometrics. We will emphasise the practical applications and real-world problems in economics and finance using relevant computer software for the collection, management and visualisation of data
This advanced-level module examines a range of key topics in finance by using core economic theory concepts and by adopting economic reasoning. We also employ mathematical and statistical techniques to analyse and inform investment decisions. The material covered, which reflects the research frontiers of economics and finance, is approached rigorously, to equip you with solid foundations for a thorough understanding of the economics of asset markets and investment management by covering a range of topical issues in finance.
In the first part of the module, we will examine the core principles underpinning decision-making under uncertainty and discuss applications to asset valuation, portfolio choice, and optimisation. Subsequently, special attention will be devoted to the arbitrage principle and its role in asset valuation and to the foreign exchange market, which is an essential part of the financial system. Reflecting more recent developments in asset markets and their impact on the economy, the last part of the module will focus on asset price bubbles and systemic risk and on the economics of cryptocurrencies as a distinctive asset class.
Providing you with a strong foundation for understanding both the economics of financial markets and the main types of securities traded in these markets, this module focuses on bonds, futures, swaps and options. It strikes a balance between the theory and practice as well as making important links between models and the real world. The emphasis is on both principles and problem solving.
Topics covered include bonds, the economics of derivatives markets, futures and forwards, swaps, and options.
This module contributes to the following CFA syllabus areas:
Securities Markets (CFA level I)
Derivative Investments (CFA levels I and II)
Debt Investments (CFA levels I, II and III)
This module aims to provide you with an overview of the methods and models used in modern macroeconomics. You will be introduced to intertemporal decisions and workhorse models in modern quantitative macroeconomics, including the overlapping-generations model, economic growth theory in closed and open economies, the Real-Business-Cycle approach, and the classical monetary and New Keynesian models.
The course will emphasise the link between theory and data and how to solve the model analytically and/or numerically (using MatLab and Dynare software). By the end of this module, you should be able to choose the appropriate model and solve it to address a macroeconomic question. Within the course, we tackle some key macroeconomic questions, such as the size of the fiscal multiplier in modern macroeconomics, the impact of technological change on labour, the cause of international differences in hours worked, and the impact of monetary policy, among others.
Optional
optional modules accordion
The aim of this module is to equip you with the tools necessary to enable you to make the core investment management decisions that managers face daily, as well as the knowledge as to where you can find the information necessary to apply those tools.
This course covers fundamental concepts and key issues in factor investing;
equilibrium theories of asset pricing
mutual funds, ETFs and hedge funds
Environmental, Social and Governance
textual analysis in empirical asset pricing
This module looks at what can happen to asset pricing in situations where market imperfections coincide with imperfections in investor rationality. It, therefore, explores the boundary between mispricing which can be exploited and that which cannot be exploited profitably.
The module lays the foundations for arbitrage, investment and wealth management, investment banking, and corporate finance. The material covered is at the frontier of academic and industry research, forming a conceptually advanced body of knowledge (CFA level III) which is of relevance for theory, research and practice.
Topics covered include:
The efficient markets hypothesis and competing theories
Limits to arbitrage
Heuristics, biases and prospect theory: mental accounts and evidence in market prices
Myopic loss aversion, disposition effect and overtrading
Professional investors and analysts: over- and under-reaction
Bubbles: observational and experimental, rational and non-rational
Closed-end fund discounts, co-movement and sentiment
The equity premium puzzle and the volatility puzzle
Herding
Behavioural portfolio theory
Turbulent decades of economic crises and increased volatilities across all asset classes have brought about innovative and strategic derivatives solutions to manage financial risk and create value. Their failure has typically been due to a lack of understanding of how to use and price derivatives. Understanding derivatives’ dynamics, risks, valuations and uses has become more important than ever.
Although there are many derivatives structures, the key to understanding derivatives is that all financial products, no matter how complex, are portfolios of just two fundamental building blocks: a swap (forward) and an option. This module provides this understanding in a rigorous, consistent and coherent framework.
This module provides an introduction to key concepts, tools, and methods in environmental economics and several key policy applications of these concepts, tools, and methods. You will learn the foundations that cut across environmental issues and be exposed to some in-depth assessments of specific sectors where governments make complex decisions to address the market failures at the origin of environmental concerns.
Many environmental policy discussions are plagued by conceptual shortcuts, a lack of data, or inappropriate data analysis. The course will help you master the tools and methods relevant to solving market failures in environmental contexts and apply them to provide rigorous foundations to ground your views on current environmental issues. While the course emphasises public interventions (as is traditional in environmental economics), it also discusses the private sector's and individuals' potential contributions.
This module equips you with the latest skills in data science, financial econometrics and quantitative finance to analyse and model asset price dynamics using techniques at the research frontier in these areas, including the work with high-frequency data, relevant for the job market (especially in Quants) and the MSc dissertation streams.
It will teach you important features of financial time series, key modelling approaches in the field, how to use high-frequency data to construct the latest volatility estimators and the most appropriate methods for forecasting price volatility and risk. It will also give you practical experience of analysing market prices, constructing volatility estimators and designing forecasting analyses through empirical projects implemented with MatLab.
Every managerial decision concerned with future actions is based upon a prediction of some aspects of the future. Therefore, forecasting plays a vital role in enhancing managerial decision-making.
After introducing the topic of forecasting in organisations, time series patterns and simple forecasting methods (naïve and moving averages) are explored. Then, the extrapolative forecasting methods of exponential smoothing and ARIMA models are considered. A detailed treatment of causal modelling follows, with a full evaluation of the estimated models. Forecasting applications in operations and marketing are then discussed. The module ends with an examination of judgmental forecasting and how forecasting can best be improved in an organisational context. Assessment is through a report aimed at extending and evaluating student learning in causal modelling and time series analysis.
The module provides an introduction to the fundamental methods and approaches from the interrelated areas of data mining, statistical/ machine learning, and intelligent data analysis. It covers the entire data analysis process, starting from the formulation of a project objective, developing an understanding of the available data and other resources, up to the point of statistical modelling and performance assessment. The focus of the module is classification and uses the R programming language.
The module aims to provide you with the hands-on time-series skills to competently estimate, test, and interpret market-risk forecasting and control models and techniques required in the current regulatory environment: Value-at-Risk, Expected Shortfall, backtesting, extreme-value distributions, and copula models.
Government interventions in the economy are ubiquitous, ranging from direct and indirect provision of goods and services to regulations and standards. In this module, we explore two key questions.
The first question concerns how and when governments should intervene. The most obvious reason is that governments enter the economy to correct market failures and restore efficiency. This is particularly relevant in cases where goods generate positive externalities, such as education or culture, or negative externalities, such as pollution. However, restoring efficiency in the market often results in creating new distortions by taxing individuals and companies. Optimal policies need to take both costs and problems such as tax evasion and tax avoidance into account. Another reason for government intervention is to address perceived economic inequalities resulting from free market outcomes. To look at this question, we need to understand how to formalise and measure preference for redistribution.
The second question we explore is where government decisions originate from in practice and what limitations exist on the implementation of optimal policies. This requires an examination of the incentives of voters and politicians. We also investigate the influence of media, special interests, and lobbying in politics.
Overall, this module combines classic economic models and contemporary empirical techniques to offer a comprehensive view of different economic approaches to the role of collective action. It is an essential resource for anyone interested in studying public policy and working in government, academia, international organisations, or regulated industries.
This module is designed to introduce students who have no or little programming experience to Python programming in the context of academic research and real-life problem-solving in accounting and finance.
This module aims to develop your interest and confidence in financial programming and analysing big financial data and to equip you with programming skills and data-driven problem-solving abilities.
There may be extra costs related to your course for items such as books, stationery, printing, photocopying, binding and general subsistence on trips and visits. Following graduation, you may need to pay a subscription to a professional body for some chosen careers.
Specific additional costs for studying at Lancaster are listed below.
College fees
Lancaster is proud to be one of only a handful of UK universities to have a collegiate system. Every student belongs to a college, and all students pay a small College Membership Fee which supports the running of college events and activities. Students on some distance-learning courses are not liable to pay a college fee.
For students starting in 2025, the fee is £40 for undergraduates and research students and £15 for students on one-year courses.
Computer equipment and internet access
To support your studies, you will also require access to a computer, along with reliable internet access. You will be able to access a range of software and services from a Windows, Mac, Chromebook or Linux device. For certain degree programmes, you may need a specific device, or we may provide you with a laptop and appropriate software - details of which will be available on relevant programme pages. A dedicated IT support helpdesk is available in the event of any problems.
The University provides limited financial support to assist students who do not have the required IT equipment or broadband support in place.
For most taught postgraduate applications there is a non-refundable application fee of £40. We cannot consider applications until this fee has been paid, as advised on our online secure payment system. There is no application fee for postgraduate research applications.
For some of our courses you will need to pay a deposit to accept your offer and secure your place. We will let you know in your offer letter if a deposit is required and you will be given a deadline date when this is due to be paid.
The fee that you pay will depend on whether you are considered to be a home or international student. Read more about how we assign your fee status.
If you are studying on a programme of more than one year’s duration, tuition fees are reviewed annually and are not fixed for the duration of your studies. Read more about fees in subsequent years.
Scholarships and bursaries
You may be eligible for the following funding opportunities, depending on your fee status and course. You will be automatically considered for our main scholarships and bursaries when you apply, so there's nothing extra that you need to do.
Unfortunately no scholarships and bursaries match your selection, but there are more listed on scholarships and bursaries page.
The information on this site relates primarily to 2025/2026 entry to the University and every effort has been taken to ensure the information is correct at the time of publication.
The University will use all reasonable effort to deliver the courses as described, but the University reserves the right to make changes to advertised courses. In exceptional circumstances that are beyond the University’s reasonable control (Force Majeure Events), we may need to amend the programmes and provision advertised. In this event, the University will take reasonable steps to minimise the disruption to your studies. If a course is withdrawn or if there are any fundamental changes to your course, we will give you reasonable notice and you will be entitled to request that you are considered for an alternative course or withdraw your application. You are advised to revisit our website for up-to-date course information before you submit your application.
More information on limits to the University’s liability can be found in our legal information.
Our Students’ Charter
We believe in the importance of a strong and productive partnership between our students and staff. In order to ensure your time at Lancaster is a positive experience we have worked with the Students’ Union to articulate this relationship and the standards to which the University and its students aspire. View our Charter and other policies.