Teaching Inference About Proportions Using Bayes and Discrete Models


Authors: 
Albert, J.
Category: 
Volume: 
3(3)
Pages: 
Online
Year: 
1995
Publisher: 
Journal of Statistics Education
URL: 
http://www.amstat.org/publications/jse/v3n3/albert.html
Abstract: 

Teaching elementary statistical inference from a traditional viewpoint can be hard, due to the difficulty in teaching sampling distributions and the correct interpretation of statistical confidence. Bayesian methods have the attractive feature that statistical conclusions can be stated using the language of subjective probability. Simple methods of teaching Bayes' rule are described, and these methods are illustrated for inference and prediction problems for one and two proportions. We discuss the advantages and disadvantages of traditional and Bayesian approaches in teaching inference and give texts that provide examples and software for implementing Bayesian methods in an elementary class.

The CAUSE Research Group is supported in part by a member initiative grant from the American Statistical Association’s Section on Statistics and Data Science Education