P-values are the most commonly used tool to measure evidence against a hy-pothesis or hypothesized model. Unfortunately, they are often incorrectly viewed as an error probability for rejection of the hypothesis or, even worse, as the poste-rior probability that the hypothesis is true. The fact that these interpretations can be completely misleading when testing precise hypotheses is first reviewed, through consideration of two revealing simulations. Then two calibrations of a p-value are de-veloped, the first being interpretable as odds and the second as either a (conditional) frequentist error probability or as the posterior probability of the hypothesis
In the 1920s, Ronald Fisher developed the theory behind the p value and Jerzy Neyman and Egon Pearso...
Null hypothesis significance testing is often criticized because attaining statistical significance ...
In the face of continuing assumptions by many scientists and journal editors that p-values provide a...
As p-values are the most common measures of evidence against a hypothesis, their calibration with re...
As p-values are the most common measures of evidence against a hypothesis, their calibration with re...
As p-values are the most common measures of evidence against a hypothesis, their calibration with re...
As p-values are the most common measures of evidence against a hypothesis, their calibration with re...
Concepts from multiple testing can improve tests of single hypotheses. The proposed definition of th...
Concepts from multiple testing can improve tests of single hypotheses. The proposed definition of th...
Concepts from multiple testing can improve tests of single hypotheses. The proposed definition of th...
Much of the blame for failed attempts to replicate reports of scientific findings has been placed on...
Failures to replicate the results of scientific studies are often attributed to misinterpretations o...
Failures to replicate the results of scientific studies are often attributed to misinterpretations o...
P -value has been criticized because it is widely misunderstood and don′t tell the researchers what ...
In the face of continuing assumptions by many scientists and journal editors that p-values provide a...
In the 1920s, Ronald Fisher developed the theory behind the p value and Jerzy Neyman and Egon Pearso...
Null hypothesis significance testing is often criticized because attaining statistical significance ...
In the face of continuing assumptions by many scientists and journal editors that p-values provide a...
As p-values are the most common measures of evidence against a hypothesis, their calibration with re...
As p-values are the most common measures of evidence against a hypothesis, their calibration with re...
As p-values are the most common measures of evidence against a hypothesis, their calibration with re...
As p-values are the most common measures of evidence against a hypothesis, their calibration with re...
Concepts from multiple testing can improve tests of single hypotheses. The proposed definition of th...
Concepts from multiple testing can improve tests of single hypotheses. The proposed definition of th...
Concepts from multiple testing can improve tests of single hypotheses. The proposed definition of th...
Much of the blame for failed attempts to replicate reports of scientific findings has been placed on...
Failures to replicate the results of scientific studies are often attributed to misinterpretations o...
Failures to replicate the results of scientific studies are often attributed to misinterpretations o...
P -value has been criticized because it is widely misunderstood and don′t tell the researchers what ...
In the face of continuing assumptions by many scientists and journal editors that p-values provide a...
In the 1920s, Ronald Fisher developed the theory behind the p value and Jerzy Neyman and Egon Pearso...
Null hypothesis significance testing is often criticized because attaining statistical significance ...
In the face of continuing assumptions by many scientists and journal editors that p-values provide a...