Chapter 2 Probability Concepts and Applications

Learning Objectives

After completing this chapter, students will be able to:

  1. 2.1 Understand the basic foundations of probability analysis.

  2. 2.2 Use Bayes’ Theorem to establish posterior probabilities.

  3. 2.3 Use Bayes’ Theorem to establish further probability revisions.

  4. 2.4 Describe and provide examples of both discrete and continuous random variables.

  5. 2.5 Explain the difference between discrete and continuous probability distributions.

  6. 2.6 Understand the binomial distribution.

  7. 2.7 Understand the normal distribution and use the normal table.

  8. 2.8 Understand the F distribution.

  9. 2.9 Understand the exponential distribution and its relation to queuing theory.

  10. 2.10 Understand the Poisson distribution and its relation to queuing theory.

Life would be simpler if we knew without doubt what was going to happen in the future. The outcome of any decision would depend only on how logical and rational the decision was. If you lost money in the stock market, it would be because you failed to consider all the information or to make a logical decision. If you got caught in the rain, it would be because you simply forgot your umbrella. You could always avoid building a plant that was too large, investing in a company that would lose money, running out of supplies, or losing crops because of bad weather. There would be no such thing as a risky investment. Life would be simpler—but boring.

It wasn’t until the sixteenth century that people started to quantify risks and to apply this concept to everyday situations. Today, the idea of risk or probability is a part of our lives. “There is a 40% chance of rain in Omaha today.” “The Florida State University Seminoles are favored 2 to 1 over the Louisiana State University Tigers this Saturday.” “There is a 50–50 chance that the stock market will reach an all-time high next month.”

A probability is a numerical statement about the likelihood that an event will occur. In this chapter, we examine the basic concepts, terms, and relationships of probability and probability distributions that are useful in solving many quantitative analysis problems. Table 2.1 lists some of the topics covered in this book that rely on probability theory. You can see that the study of quantitative analysis and business analytics would be quite difficult without it.

Table 2.1 Chapters in This Book That Use Probability

CHAPTER TITLE
3 Decision Analysis
4 Regression Models
5 Forecasting
6 Inventory Control Models
11 Project Management
12 Waiting Lines and Queuing Theory Models
13 Simulation Modeling
14 Markov Analysis
15 Statistical Quality Control
Module 3 Decision Theory and the Normal Distribution
Module 4 Game Theory
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