Keio University Syllabus and Timetable

PROBABILITY[DS1]

Lecturer(s)SAKAI, SHOTARO
Credit(s)2
Academic Year/Semester2025 Spring
Day/PeriodMon.1
CampusSFC
Class FormatFace-to-face classes (conducted mainly in-person)
Registration Number41908
Faculty/Graduate SchoolPOLICY MANAGEMENT / ENVIRONMENT AND INFORMATION STUDIES
Year Level1, 2, 3, 4
FieldFUNDAMENTAL SUBJECTS SUBJECTS OF DATA SCIENCE DATA SCIENCE 1
Grade TypeThis item will appear when you log in (Keio ID required).
Related ClassesB3101 統計基礎/INTRODUCTION TO STATISTICS
B3103 微分・積分/CALCULUS
B3104 線形代数/LINEAT ALGEBRA
LocationSFC
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K-Number FPE-CO-03013-211-12
Course AdministratorFaculty/Graduate SchoolFPEPOLICY MANAGEMENT / ENVIRONMENT AND INFORMATION STUDIES
Department/MajorCO
Main Course NumberLevel0Faculty-wide
Major Classification3Fundamental Subjects (Other Than Introductory Subjects, Subjects of Language Communication)
Minor Classification01Subjects of Data Science - Data Science 1
Subject Type3Elective subject
Supplemental Course InformationClass Classification2Lecture
Class Format1Face-to-face classes (conducted mainly in-person)
Language of Instruction1Japanese
Academic Discipline12Analysis, applied mathematics, and related fields

Course Summary

This is an introduction to the mathematical theory of probability. We begin with the basics of set theory, mathematical logic, and combinatorics, on which we build probability theory. After introducing the concept of probability, we cover fundamental topics in probability theory: conditional probability, independence, Bayes' theorem, random variables, probability distributions, expectation, variance, and the central limit theorem.

Course Description/Objectives/Teaching Method/Intended Learning Outcome

The theme of this lecture is the mathematical theory of probability with a focus on data science. Probability is, in fact, a fundamental tool in statistics, information theory, and computer science. Building on high school mathematics, we will explore several important topics in probability. The goal is to develop familiarity with this increasingly important subject so that students can freely apply basic probability theory in their respective fields of study in the future.

Active Learning MethodsDescription

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Preparatory Study

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Course Plan

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Method of Evaluation

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Textbooks

No specific designation.

Reference Books

Lecture materials will be distributed as printed copies or made available for download.

Lecturer's Comments to Students

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