Skip to content

Bayes factor testing for β coefficients in the network autocorrelation model using Savage-Dickey ratio and BIC approximation methods. It proposes Bayes factors for two-sided and multiple hypotheses testing procedures

Notifications You must be signed in to change notification settings

afrakilic/BF-test-for-NAM-Beta-Coefficients

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

8 Commits
 
 
 
 
 
 

Repository files navigation

Bayes Factor Hypothesis Testing for Network Autocorrelation Beta Coefficients

This simulation study presents Bayes factor testing for β coefficients in the network autocorrelation model using Savage-Dickey ratio and BIC approximation methods. It proposes Bayes factors for two-sided and multiple hypotheses testing procedures

In network autocorrelation model, the classical hypothesis testing procedures for independent variables’ effect on the outcome variable can only be used to falsify a precise null hypothesis of no effect. Classical methods are incompetent for both quantifying evidence for the null and testing multiple hypotheses simultaneously. In order to deal with these limitations, this study presents Bayes factor testing for β coefficients in the network autocorrelation model using Savage-Dickey ratio and BIC approximation methods. We propose Bayes factors for two-sided and multiple hypotheses testing procedures. Simulation results suggest that Bayes factor for the latter shows higher performance and it is the one we recommend. Then, we illustrate the practical use of the proposed Bayes factors with two real data examples and compare the results to those coming from classical tests using p values. Finally, R code used in this study and for computing the proposed Bayes factors is provided.

About

Bayes factor testing for β coefficients in the network autocorrelation model using Savage-Dickey ratio and BIC approximation methods. It proposes Bayes factors for two-sided and multiple hypotheses testing procedures

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages