Course title
L00390003
Data Analysis Method

KIMURA Masaomi
Course description
Understand necessary knowledge of mathematics and statistics and basic concept of statistical analysis for data analysis.
Acquire basic ideas and procedures to get correct information from data
Purpose of class
Understand necessary knowledge of mathematics and statistics and acquire basic ideas and procedures for data analysis
Goals and objectives
  1. The students can understand knowledge of mathematics and statistics necessary for data analysis
  2. The students can understand basic ideas of statistical analysis necessary for data analysis
  3. The students can acquire basic techniques of statistical analysis necessary for data analysis
Relationship between 'Goals and Objectives' and 'Course Outcomes'

Final exam Quiz Final report Total.
1. 10% 7% 13% 30%
2. 10% 7% 13% 30%
3. 20% 6% 14% 40%
Total. 40% 20% 40% -
Evaluation method and criteria
Quiz 20%、Final examination 40% report 40%
Students will get 60 points, if they understand fundamental algorithms and can apply it to small/middle sized data.
Language
Japanese
Class schedule

Class schedule HW assignments (Including preparation and review of the class.) Amount of Time Required
1. Purpose of statistical analysis
Basic knowledge of statistical analysis
Read Chap.1 and Chap. 2 of textbook 150minutes
2. Difference test and analysis of variance
Cross tabulation and independence test
Read Chap. 3 150minutes
3. Single regression analysis
Multiple regression analysis

Quantification method 1 & 2
Read Chap. 3.1 150minutes
4. Data analysis practice (1)
regression analysis
Review Chap. 3.3 150minutes
5. Variable synthesis and principal component analysis
Quantification method 3
Review the distributed material. 150minutes
6. Data analysis practice (2)
principal component analysis
Review the distributed material. 150minutes
7. Clustering
- k-means
- agglomerative clustering
- Density-based method
- Other methods

Model selection
- AIM
Review Chap. 4 150minutes
8. Data analysis practice (3)
Clustering
Review Chap. 4 420minutes
9. Decision tree
SVM
Review Chap. 4.6 150minutes
10. Data analysis practice (4)
Decision tree
SVM
Review Chap.4.7 150minutes
11. Neural Network and Deep learning Review the distributed material. 150minutes
12. Data analysis practice (5)
Neural Network and Deep learning
Review the distributed material. 150minutes
13. Exercise of Data analysis Review the distributed material. 150minutes
14. Review and final examination Review and reporting 430minutes
Total. - - 2650minutes
Feedback on exams, assignments, etc.
ways of feedback specific contents about "Other"
Feedback in the class
Textbooks and reference materials
Textbook: Nagatugu Yamanouchi.,Introduction of data analysis with Python, Ohm sha
Prerequisites
Carculus, lenear algebra and statistics are necessary.
Learning of Applied mathematics is desirable.
Office hours and How to contact professors for questions
  • 13:00 to 15:00 on Friday
Regionally-oriented
Non-regionally-oriented course
Development of social and professional independence
  • Course that cultivates an ability for utilizing knowledge
  • Course that cultivates a basic problem-solving skills
Active-learning course
Most classes are interactive
Course by professor with work experience
Work experience Work experience and relevance to the course content if applicable
N/A N/A
Education related SDGs:the Sustainable Development Goals
  • 9.INDUSTRY, INNOVATION AND INFRASTRUCTURE
Last modified : Sat Mar 08 04:22:24 JST 2025