Hypothesis testing is a special form of model selection. Once a pair of competing models is fully defined, their definition immediately leads to a measure of how strongly each model supports the data. The ratio of their support is often called the likelihood ratio or the Bayes factor. Critical in the model-selection endeavor is the specification of the models. In the case of hypothesis testing, it is of the greatest importance that the researcher specify exactly what is meant by a “null” hypothesis as well as the alternative to which it is contrasted, and that these are suitable instantiations of theoretical positions. Here, we provide an overview of different instantiations of null and alternative hypotheses that can be useful in practice,...
Hypothesis testing and model choice are quintessential questions for statistical inference and while...
Null hypothesis testing (NHT) is the most commonly used tool in empirical psychological research eve...
This tutorial on Bayesian inference targets psychological researchers who are trained in the null hy...
While the Bayesian parameter estimation has gained a wider acknowledgement among political scientist...
This chapter focuses on Bayesian methods and illustrates both the intrinsic unity of Bayesian thinki...
In modern statistical and machine learning applications, there is an increasing need for developing ...
Most researchers have specific expectations concerning their research questions. These may be derive...
Most researchers have specific expectations concerning their research questions. These may be derive...
Null hypothesis significance testing (NHST) has been under scrutiny for decades. The literature show...
Filling a gap in current Bayesian theory, Statistical Inference: An Integrated Bayesian/Likelihood A...
Hypothesis testing is a model selection problem for which the solution proposed by the two main stat...
There has recently been much debate about the merits of null hypothesis significance testing (NHST)....
In this paper we review the concepts of Bayesian evidence and Bayes factors, also known as log odds ...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
Learning about hypothesis evaluation using the Bayes factor could enhance psychological research. In...
Hypothesis testing and model choice are quintessential questions for statistical inference and while...
Null hypothesis testing (NHT) is the most commonly used tool in empirical psychological research eve...
This tutorial on Bayesian inference targets psychological researchers who are trained in the null hy...
While the Bayesian parameter estimation has gained a wider acknowledgement among political scientist...
This chapter focuses on Bayesian methods and illustrates both the intrinsic unity of Bayesian thinki...
In modern statistical and machine learning applications, there is an increasing need for developing ...
Most researchers have specific expectations concerning their research questions. These may be derive...
Most researchers have specific expectations concerning their research questions. These may be derive...
Null hypothesis significance testing (NHST) has been under scrutiny for decades. The literature show...
Filling a gap in current Bayesian theory, Statistical Inference: An Integrated Bayesian/Likelihood A...
Hypothesis testing is a model selection problem for which the solution proposed by the two main stat...
There has recently been much debate about the merits of null hypothesis significance testing (NHST)....
In this paper we review the concepts of Bayesian evidence and Bayes factors, also known as log odds ...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
Learning about hypothesis evaluation using the Bayes factor could enhance psychological research. In...
Hypothesis testing and model choice are quintessential questions for statistical inference and while...
Null hypothesis testing (NHT) is the most commonly used tool in empirical psychological research eve...
This tutorial on Bayesian inference targets psychological researchers who are trained in the null hy...