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2021 Faculty Courses School of Engineering Department of Industrial Engineering and Economics Graduate major in Industrial Engineering and Economics

Applied Statistical Analysis

Academic unit or major
Graduate major in Industrial Engineering and Economics
Instructor(s)
Masami Miyakawa
Class Format
Lecture
Media-enhanced courses
-
Day of week/Period
(Classrooms)
5-6 Tue / 5-6 Fri
Class
-
Course Code
IEE.C431
Number of credits
200
Course offered
2021
Offered quarter
1Q
Syllabus updated
Jul 10, 2025
Language
English

Syllabus

Course overview and goals

Practical methods of advanced statistics are explained.

Course description and aims

To master the gramer of science for your research.

Keywords

Analysis of variance, Regression analysis, Analysis of interaction. Parameter design, Graphical modeling

Competencies

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

Class flow

Exercise is performed in every class.  PC or EC are necessary.

Course schedule/Objectives

Course schedule Objectives
Class 1

Orientation, Buffon needle

Estimation of dintance

Class 2

One-way layout: anaysisi of variance and orthogonal polynomial

Application of orthogonal polinomial

Class 3

Analysis of three-way contingency table

Application of Mntel and Hentzel Test

Class 4

corelation, multiple cprelation, partial corelation

Analysis of partial corelation

Class 5

path analysisl

Application of path analysis

Class 6

Interaction analysis for two-way data
Application of orthogonal polynomial

Application of orthogonal for two-way data

Class 7

Interaction analysis for two-way data
Application of FANOVA model

Application of FANOVA model

Class 8

Principal component analysis

Analysis with principal component analysis

Class 9

Correspondence Analysis

Applicatiopn of correspondence analysis

Class 10

Multiple correspondence analysis

Application of multiple correspondence analysis

Class 11

Analysis of covariance and intermediate variable

Application of analysis of variance

Class 12

Metric multi-dimensional scaling

Application of metric multi-dimensional scaling

Class 13

Discriminant analysis

Analysis with asymmetric discrimminant analysis

Class 14

Graphicak modeling: Covariance selection

Application of covariance selection

Study advice (preparation and review)

To enhance effective learning, students are encouraged to spend approximately 100 minutes preparing for class and another 100 minutes reviewing class content afterwards (including assignments) for each class.
They should do so by referring to textbooks and other course material.

Textbook(s)

Nothing

Reference books, course materials, etc.

Enkawa,T. and Miyakawa,M. SQC Theoey and Practice
Miyakawa,M. Statistical Technology
Miyakawa,M. Graphical MOdelong
Miyakawa,M. Technology for Getting Quality

Evaluation methods and criteria

Evaluation of reports.

Related courses

  • IEE.A204 : Probability for Industrial Engineering and Economics
  • IEE.A205 : Statistics for Industrial Engineering and Economics

Prerequisites

Elementary statistical methods