谢菲尔德大学统计与金融数学专业项目网站

Statistics with Financial Mathematics

英国公立商科

项目背景

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更新时间:2024-07-09

专业排名N/A

大学谢菲尔德大学

开学时间9月

课程学制1年

学费26350.00/GBP

专业介绍

The course trains you to apply the probabilistic, statistical and mathematical techniques that are used in the finance industry. It's based on our Statistics MSc course, but also includes key financial topics such as the Capital Asset Pricing Model, the Black-Scholes option pricing formula and stochastic processes. You’ll also develop a detailed working knowledge of more general statistical techniques and concepts, including linear and generalised linear modelling, Bayesian statistics, time series and machine learning. You’ll learn how to analyse and draw meaningful conclusions from data, and develop your programming skills using the statistical computing software R. Around one-third of the course is devoted to your dissertation. This may focus on investigating a data set, or a more theoretical or methodological topic. The aim is to give you skills to include on your CV, such as planning and researching a project, data acquisition, problem specification, analysis and reporting your findings. Dissertation topics are often provided by external clients – for example, pharmaceutical companies or sports modelling organisations. Distance learning students often come with projects designed by their employer.

推荐顾问

语言要求

类型
雅思
托福
PTE
Listen
6
19
56
Speak
6
22
56
Read
6
20
56
Write
6
19
56
总分
6.5
88
61

学术要求

专业领域:含足够数量的数学或统计学科目的专业。

先修科目:

1 Mathematical Methods for Statistics

real analysis and linear algebra, including multiple integration, differentiation, matrix algebra, the theory of quadratic forms.

2 Probability and Probability Distributions

the laws of probability and of conditional probability, the concepts of random variables and random vectors and their distributions, the methodology for calculating with them; laws of large numbers and central limit phenomena.

3 Basic Statistics

statistical inference, rational decision-making under uncertainty, and how they may be applied in a wide range of practical circumstances; relevant software, for example, R.

4 Real analysis and stochastic processes

limits of sequences and series, convergence tests, continuity and differentiability, stochastic processes and the Markov property.

课程设置

Core modules:核心模块 Financial Mathematics:金融数学 Machine Learning:机器学习 Time Series:时间序列 Stochastic Processes and Finance:随机过程与金融 The Statistician's Toolkit:统计学家的工具包 Bayesian Statistics and Computational Methods:贝叶斯统计和计算方法 Dissertation:论文

申请案例

学生姓名:朱**

毕业学校:北京交通大学/Beijing Jiaotong University,

本科专业:统计学 Statistics/Minor: Law

基本背景:/GPA76.9/100/雅思0