日本語

Course Code etc
Academic Year 2024
College College of Economics
Course Code BX581
Theme・Subtitle
Class Format Face to face (all classes are face-to-face)
Class Format (Supplementary Items)
Campus Lecture
Campus Ikebukuro
Semester Spring Semester
DayPeriod・Room Thu.3・8402
Credit 2
Course Number ECX2010
Language Japanese
Class Registration Method Lottery Registration(定員:50人/ Capacity:50)
Grade (Year) Required 配当年次は開講学部のR Guideに掲載している科目表で確認してください。
prerequisite regulations
Acceptance of Other Colleges 履修登録システムの『他学部・他研究科履修不許可科目一覧』で確認してください。
course cancellation 〇(履修中止可/ Eligible for cancellation)
Online Classes Subject to 60-Credit Upper Limit
Relationship with Degree Policy 各授業科目は、学部・研究科の定める学位授与方針(DP)や教育課程編成の方針(CP)に基づき、カリキュラム上に配置されています。詳細はカリキュラム・マップで確認することができます。
Notes
Text Code BX581

【Course Objectives】

To practice basic analysis of statistics, econometrics, and machine learning using R, a programing language for statistical analysis and machine learning, to learn the fundamentals of data science.

【Course Contents】

Students will acquire statistics, econometrics, and machine learning fundamental knowledge and then write code using R to analyze actual data sets. This lecture will be divided into three parts. In Part 1 (Introduction to R) students will learn the basic methods for analyzing data using R, in Part 2 (Econometrics) they will practice econometric analysis using R, and in Part 3 (Machine Learning) they will practice machine learning using R. For each class, first a simple explanation of the practice contents will be given and then each student will write code, conduct an analysis, and compile the analysis results. The theoretical explanation will be limited to basic and intuitive things to allow students to focus on actually writing their own code and using it to conduct analysis. (Therefore, It is recommended to take a course about econometrics to learn the theory of econometrics)

※Please refer to Japanese Page for details including evaluations, textbooks and others.