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Unit information: Mathematical and Statistical Methods 1 in 2019/20

Please note: It is possible that the information shown for future academic years may change due to developments in the relevant academic field. Optional unit availability varies depending on both staffing and student choice.

Unit name Mathematical and Statistical Methods 1
Unit code EFIM10008
Credit points 20
Level of study C/4
Teaching block(s) Teaching Block 1 (weeks 1 - 12)
Unit director Dr. Somekh
Open unit status Not open

A-level Mathematics (or equivalent)



School/department School of Economics, Finance and Management
Faculty Faculty of Social Sciences and Law


This unit aims to equip students with the basic mathematical and statistical tools most widely used in Economics, Finance, Accounting and Management.

On the mathematical side, the unit covers basic multivariate calculus, mainly partial differentiation, constrained and unconstrained optimisation, and simple integration.

On the statistical side, the unit covers fundamental ideas of mathematical statistics, including concepts such a random variable, a probability distribution function, an expected value, a variance and a covariance.

Intended learning outcomes

Students will be able to:

1. Demonstrate competence in differentiating multivariate functions with respect to a variable.

2. Solve unconstrained optimisation problems.

3. Solve optimisation problems with equality constraints using the Lagrangian method.

4. Understand the concept of integral and be able to compute a variety of simple integrals

5. Identify an economic, financial or management problem that is expressed in mathematical form.

6. Demonstrate an ability to express real world problems in a mathematical form.

7. Explain important statistical concepts such as sample space, probability of an event, conditional probability, random variable, marginal distributions, expected value and sampling distribution.

8. Calculate statistics such as a mean or a covariance and be able to interpret them.

9. Understand the theory of estimation and hypothesis testing.

Teaching details

36 hours of lectures

9 hours of classes

Assessment Details

Summative assessment:

2.5-hour examination in January worth 100%. This tests all the learning outcomes.

Formative Assessment:

Students will submit two assignments. These assignments will be problem-based, and will consist of questions based on the course material. In addition, students will be expected to complete regular problem sets in advance of classes.

Reading and References

Sydsaester, K. and Hammond, P., Essential Mathematics for Economic Analysis, Prenctice Hall.

Stock J. and Watson M. (2007) Introduction to Econometrics 3rd edition Pearson Education, New York

Gujarati D. and D. Porter (2010) Essentials of Econometrics (4th Edition) McGraw Hill Irwin

Cranshaw J. and J. Chambers (2001) A concise course in A level Statistics fourth edition Nelson Thornes

Mendenhall, Schaeffer and Wackerly (1990) Mathematical Statistics with applications (4th Edition) Boston: Duxbery Press