日本語

Course Code etc
Academic Year 2024
College College of Science
Course Code CA236
Theme・Subtitle
Class Format Face to face (all classes are face-to-face)
Class Format (Supplementary Items) 対面(全回対面)/Face to face (all classes are face-to-face)
Campus Lecture
Campus Ikebukuro
Semester Fall semester
DayPeriod・Room Sat.3・4341, Sat.4・4341
Credit 2
Course Number MAT3530
Language Japanese
Class Registration Method Course Code Registration
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 LC202数理統計学1、RC202数理統計学1と合同授業
不定期開講:講義日は以下のとおり
9/21,10/5,10/19,11/23,12/7,12/21,1/18
2024.04.30付変更【変更内容】11/9→23
Text Code CA236

【Course Objectives】

In modern society, it is important to know how to extract information from data that appears in phenomena that involve randomness.Assuming a probability distribution behind the obtained data, we can infer that probability distribution based on the data. We will learn the mathematical basics of estimating probability distributions based on data.

【Course Contents】

First, we will learn the definitions of probability spaces, random variables, expected values, and modes of convergence of random variables. Next, we will explain typical statistical models and sampling distribution theory (especially normal distribution theory). Based on this, we will learn statistical inference methods (basic concepts and typical methods) for point estimation, interval estimation, and test theory. Finally, we will discuss some typical topics regarding how to evaluate the accuracy of these methods.

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