Overview

You will use the concept of random variables and their uses as  models of uncertain future  payoffs. An important concept for analysis is the conditional expectation. Special attention is given to normal distribution and multivariate normal distribution, in which explicit calculations are possible. Systems evolving in time encorporating uncertainty are … For more content click the Read More button below.

Offerings

S1-01-CLAYTON-ON-CAMPUS
S2-01-CLAYTON-ON-CAMPUS

Rules

Enrolment Rule

Contacts

Chief Examiner(s)

Professor Fima Klebaner

Unit Coordinator(s)

Dr Ivan Guo
Professor Fima Klebaner

Learning outcomes

On successful completion of this unit, you should be able to:
1.

Learn the modern approach to evaluation of uncertain future payoffs;

2.

Describe the concept of arbitrage and its  relevance to financial contracts;

3.

Demonstrate understanding of conditional expectation, martingales and stopping times;

4.

Interpret models of random processes such as random walk, Brownian motion and diffusion, and stochastic differential equations;

5.

Use Ito’s formula and basic stochastic calculus to solve some stochastic differential equations;

6.

Apply the change of probability measure technique and use the Equivalent Martingale Measure for pricing of financial derivatives;

7.

Apply the fundamental theorems of asset pricing to the Binomial and Black-Scholes models. Pricing and Hedging;

8.

Formulate discrete time Risk Model in Insurance and use the Optional Stopping Theorem to control probabilities of ruin.

Teaching approach

Active learning

Assessment

1 - In-semester assessment
2 - In-semester assessment
3 - Examination (3 hours and 10 minutes)

Scheduled and non-scheduled teaching activities

Applied sessions
Lectures

Workload requirements

Workload

Availability in areas of study

Applied mathematics
Financial and insurance mathematics
Mathematical statistics
Mathematics