Currently available (classical) testing procedures for the network autocorrelation can only be used for falsifying a precise null hypothesis of no network effect. Classical methods can be neither used for quantifying evidence for the null nor for testing multiple hypotheses simultaneously. This article presents flexible Bayes factor testing procedures that do not have these limitations. We propose Bayes factors based on an empirical and a uniform prior for the network effect, respectively, first. Next, we develop a fractional Bayes factor where a default prior is automatically constructed. Simulation results suggest that the first two Bayes factors show superior performance and are the Bayes factors we recommend. We apply the recommended Ba...
This article describes the use of Bayes factors for comparing dynamic causal models (DCMs). DCMs are...
The network autocorrelation model has become an increasingly popular tool for conducting social netw...
There have been considerable methodological developments of Bayes factors for hypothesis testing in ...
The network autocorrelation model has been the workhorse for estimating and testing the strength of ...
People do not live in isolation. Instead, we constantly interact with others, which affects our acti...
The network autocorrelation model has been extensively used by researchers interested modeling socia...
Researchers are frequently interested in testing variances of two independent populations. We often ...
Correlation coefficients play a key role in the social and behavioral Sciences for quantifying the d...
In this paper, we develop Bayes factor based testing procedures for the presence of a correlation or...
In this article, we present a Bayes factor solution for inference in multiple regression. Bayes fact...
In the Bayesian approach to model selection and hypothesis testing, the Bayes factor plays a central...
The Bayes factors with improper noninformative priors are defined only up to arbitrary constants. So...
The network autocorrelation model has become an increasingly popular tool for conducting social netw...
The intraclass correlation plays a central role in modeling hierarchically structured data, such as ...
This article describes the use of Bayes factors for comparing Dynamic Causal Models (DCMs). DCMs are...
This article describes the use of Bayes factors for comparing dynamic causal models (DCMs). DCMs are...
The network autocorrelation model has become an increasingly popular tool for conducting social netw...
There have been considerable methodological developments of Bayes factors for hypothesis testing in ...
The network autocorrelation model has been the workhorse for estimating and testing the strength of ...
People do not live in isolation. Instead, we constantly interact with others, which affects our acti...
The network autocorrelation model has been extensively used by researchers interested modeling socia...
Researchers are frequently interested in testing variances of two independent populations. We often ...
Correlation coefficients play a key role in the social and behavioral Sciences for quantifying the d...
In this paper, we develop Bayes factor based testing procedures for the presence of a correlation or...
In this article, we present a Bayes factor solution for inference in multiple regression. Bayes fact...
In the Bayesian approach to model selection and hypothesis testing, the Bayes factor plays a central...
The Bayes factors with improper noninformative priors are defined only up to arbitrary constants. So...
The network autocorrelation model has become an increasingly popular tool for conducting social netw...
The intraclass correlation plays a central role in modeling hierarchically structured data, such as ...
This article describes the use of Bayes factors for comparing Dynamic Causal Models (DCMs). DCMs are...
This article describes the use of Bayes factors for comparing dynamic causal models (DCMs). DCMs are...
The network autocorrelation model has become an increasingly popular tool for conducting social netw...
There have been considerable methodological developments of Bayes factors for hypothesis testing in ...