Data Analysis
Date: 2018-10-15 Views: 13

Course name: Data Analysis

Course No.:1080046    Credit(s): 2

Course Description

Data analysis is major course for students in information and computing science. The main aim of the course is to develop the basic ability of data analysis of students, and enable students to solve problems like regression, classification, clustering and PCA with Matlab software. The study of the course lays foundation for students in data analysis in financial management and for their following scientific research.

Course teaching objective

The student learning outcomes are what student would be able to know and to do on the completion of this course. In details are:

  

1.Get to know basic theory of some data analytic methods like regression, classification, clustering, and PCA;

2.Master the demanding mode of those algorithms;

3.Be able to solve simple problems with some data analytic algorithms and demands.

Pre-course

Differential and Integral Calculus, Linear Algebra, Probability and Mathematical Statistics

Textbooks and References

Teaching Materials:

Matlab Data Analysis Methods. Li BaiNian, Wu LiBin, China Machine Press, 2012, Edition 1

References

1.Data Analysis Methods, Fan JinCheng, Mei ChangLin, Higher Education Press,2006.

2.Matlab and Financial Model Analysis. Deng LiuBao. Hefei university of technology press, 2007.

Course Assessment

  

Form

Weight (%)

Attendance

20%

Experiment

40%

Final exam

40%

  

Course schedule

  

Chapter

Content

Period

Chapter 2

Descriptive analysis of data

8

Chapter 3

Regression analysis

8

Chapter 4

Discriminant analysis

8

Chapter 5

Principal component analysis

6

Chapter 6

Cluster analysis

6

Total

  

36

  

Weekly

Period

Content

Week 1

4

§Descriptive analysis of data

Week 2

4

§Descriptive analysis of data

Week 3

4

§Regression analysis

Week 4

4

§Regression analysis

Week 5

4

§Discriminant analysis

Week 6

4

§Discriminant analysis

Week 7

4

§Principal component analysis

Week 8

4

§Principal component analysis and cluster analysis

Week 9

4

§Cluster analysis