데이터사이언스를 위한 수학과 통계의 기초
Math and Statistics Foundations for Data Science
Seunggeun Lee (lee7801@snu.ac.kr)
Goals
All areas of data science are concerned with collecting and analyzing data. This course is designed to provide foundations of probability and statistics. From this course, student will understand how probability and statistics explain the data generating process and can be used to analyze data.
- · Definition of Probability
- · Random Variables
- · Expectation , Convergence of Random Variables
- · Statistical Inference
- · Parametric and non-parametric method (such as Bootstrap)
- · Hypothesis test
- · Bayesian Inference
Content
01. Course introduction, Intro Data
02. Probability
03. Random Variable (1)
04. Random Variable (2), Expectation (1)
05. Expectation (2)
06. Convergence
07. Introduction of the Inference, CDF
08. Bootstrap
09. Parametric Inference (1)
10. Parametric Inference (2)
11. Hypothesis Test (1)
12. Hypothesis Test (2), Bayesian Inference (1)
13. Bayesian inference (2)
14. Regression (1)
15. Regression (2)
Textbook
All of Statistics by Larry Wasserman, Springer 2004
Grading Policy
- · Attendance: 5%
- · Task: 40%
- · Midterm: 25%
- · Final: 30%