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2024 Faculty Courses School of Environment and Society Department of Technology and Innovation Management Graduate major in Technology and Innovation Management

Methodology of Mathematical and Computational Analysis I

Academic unit or major
Graduate major in Technology and Innovation Management
Instructor(s)
Shuto Miyashita
Class Format
Lecture/Exercise (HyFlex)
Media-enhanced courses
-
Day of week/Period
(Classrooms)
1-2 Sat
Class
-
Course Code
TIM.A405
Number of credits
0.50.50
Course offered
2024
Offered quarter
3Q
Syllabus updated
Mar 14, 2025
Language
Japanese

Syllabus

Course overview and goals

While the use of data is highly expected in business, correct understanding about methodology of data analysis is required for appropriate decision-making.
In this lecture, students learn basic knowledge for quantitative analysis, especially statistical analysis, in Management of Technology.

Course description and aims

The goals of this course are as follows:
- To understand the basics of data analysis so that students can use them to solve business problems.
- To be able to program for elementary data analysis, especially statistical analysis.

Keywords

Statistics, data science, quantitative analysis, descriptive statistics, hypothesis testing, regression analysis

Competencies

  • Specialist skills
  • Intercultural skills
  • Communication skills
  • Critical thinking skills
  • Practical and/or problem-solving skills

Class flow

Lectures provide the knowledge on elementary data analysis and programming exercises is scheduled after each topic.
In the programming exercises, students overview the flow of data analysis using Python and develop the ability applying data analysis to business problems.

Course schedule/Objectives

Course schedule Objectives
Class 1 Guidance Understand the overview of data science and quantitative analysis, especially statistical analysis, in business
Class 2 Descriptive statistics Understand the basic summary statistics and data visualization methods
Class 3 Programming exercise (1) Acquire fundamental programming skills how to use Python through exercises
Class 4 Hypothesis testing Understand the procedures for hypothesis testing and what to pay attention to when applying it
Class 5 Programming exercise (2) Acquire programming skills for descriptive statistics and hypothesis testing through exercises
Class 6 Regression analysis Understand what kind of problems to be suit for regression analysis and its assumptions behind performing
Class 7 Programming exercise (3) Acquire programming skills for regression analysis through exercises

Study advice (preparation and review)

It is recommended to read and review the relevant sections of the references after the lecture.
In order to master programming, learning by writing code on outside of class is also recommended.

Textbook(s)

None required.

Reference books, course materials, etc.

Lecture materials will be distributed.
In addition to those listed below, references will be introduced in the lecture.

Foster Provost Tom Fawcett, Data Science for Business: What You Need to Know about Data Mining and Data-Analytic Thinking O'Reilly Media (2013)

Evaluation methods and criteria

Class contribution 20%, Exercise 30%, Report 50%

Related courses

  • TIM.B412 : Strategic Management for Research and Development I
  • TIM.B413 : Strategic Management for Research and Development II
  • TIM.A414 : Introduction to Models and Experiments in Social Science
  • TIM.B535 : Digital Marketing
  • TIM.A406 : Methodology of Mathematical and Computational Analysis II

Prerequisites

No prerequisites.