Bayesian Statistical Inference and Decision Making

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Overview

Subject area

OPR

Catalog Number

3453

Course Title

Bayesian Statistical Inference and Decision Making

Description

A study of the techniques of Bayesian statistical inference and decision making. The course is designed to introduce the student to the general concepts of the Bayesian approach - utilization of all available information. Specific topics will include probability - objective and subjective; discrete and continuous models; prior and posterior analysis; decision theory; utility and decision making; value of sample information; and pre-posterior analysis. Differences and similarities between classical and Bayesian analysis are discussed. All areas of decision making will be applied to business problems. Students interested in this course should see a department advisor.

Typically Offered

Fall, Spring, Summer

Academic Career

Undergraduate

Liberal Arts

No

Credits

Minimum Units

3

Maximum Units

3

Academic Progress Units

3

Repeat For Credit

No

Components

Name

Lecture

Hours

3

Requisites

025035

Course Schedule