Ly and Wagenmakers (Computational Brain & Behavior:1–8, in press) critiqued the Full Bayesian Significance Test (FBST) and the associated statistic FBST ev: similar to the frequentist p-value, FBST ev cannot quantify evidence for the null hypothesis, allows sampling to a foregone conclusion, and suffers from the Jeffreys-Lindley paradox. In response, Kelter (Computational Brain & Behavior:1–11, 2022) suggested that the critique is based on a measure-theoretic premise that is often inappropriate in practice, namely the assignment of non-zero prior mass to a point-null hypothesis. Here we argue that the key aspects of our initial critique remain intact when the point-null hypothesis is replaced either by a peri-null hypothesis or by an interv...
Inference using significance testing and Bayes factors is compared and contrasted in five case studi...
It is always flattering to see one’s work cited by others. Not only does it boost the ego, but it pr...
Significance testing has become a mainstay in machine learning, with the p value being firmly embedd...
Ly and Wagenmakers (Computational Brain & Behavior:1–8, in press) critiqued the Full Bayesian Signif...
Ly and Wagenmakers (Computational Brain & Behavior:1–8, in press) critiqued the Full Bayesian Signif...
In a recent article, Killeen (2005a) proposed an alternative to traditional null-hypothesis signific...
The “Full Bayesian Significance Test e-value”, henceforth FBST ev, has received increasing attention...
The Full Bayesian Significance Test, FBST, is extensively reviewed. Its test statistic, a genuine Ba...
Null hypothesis significance testing (NHST) has been the subject of debate for decades and alternati...
Null hypothesis significance testing (NHST) has long been a mainstay of scientific research, more in...
I welcome Guttorp and Häggström’s comments on my pa-per (Ambaum, 2010) and their contribution to t...
This chapter explains why the logic behind p‐value significance tests is faulty, leading researchers...
D. Trafimow (2003) presented an analysis of null hypothesis significance testing (NHST) using Bayes’...
No scientific conclusion follows automatically from a statistically non-significant result, yet peop...
Null hypothesis significance testing is often criticized because attaining statistical significance ...
Inference using significance testing and Bayes factors is compared and contrasted in five case studi...
It is always flattering to see one’s work cited by others. Not only does it boost the ego, but it pr...
Significance testing has become a mainstay in machine learning, with the p value being firmly embedd...
Ly and Wagenmakers (Computational Brain & Behavior:1–8, in press) critiqued the Full Bayesian Signif...
Ly and Wagenmakers (Computational Brain & Behavior:1–8, in press) critiqued the Full Bayesian Signif...
In a recent article, Killeen (2005a) proposed an alternative to traditional null-hypothesis signific...
The “Full Bayesian Significance Test e-value”, henceforth FBST ev, has received increasing attention...
The Full Bayesian Significance Test, FBST, is extensively reviewed. Its test statistic, a genuine Ba...
Null hypothesis significance testing (NHST) has been the subject of debate for decades and alternati...
Null hypothesis significance testing (NHST) has long been a mainstay of scientific research, more in...
I welcome Guttorp and Häggström’s comments on my pa-per (Ambaum, 2010) and their contribution to t...
This chapter explains why the logic behind p‐value significance tests is faulty, leading researchers...
D. Trafimow (2003) presented an analysis of null hypothesis significance testing (NHST) using Bayes’...
No scientific conclusion follows automatically from a statistically non-significant result, yet peop...
Null hypothesis significance testing is often criticized because attaining statistical significance ...
Inference using significance testing and Bayes factors is compared and contrasted in five case studi...
It is always flattering to see one’s work cited by others. Not only does it boost the ego, but it pr...
Significance testing has become a mainstay in machine learning, with the p value being firmly embedd...