Psychology journals rarely publish nonsignificant results. At the same time, it is often very unlikely (or “too good to be true”) that a set of studies yields exclusively significant results. Here, we use likelihood ratios to explain when sets of studies that contain a mix of significant and nonsignificant results are likely to be true or “too true to be bad.” As we show, mixed results are not only likely to be observed in lines of research but also, when observed, often provide evidence for the alternative hypothesis, given reasonable levels of statistical power and an adequately controlled low Type 1 error rate. Researchers should feel comfortable submitting such lines of research with an internal meta-analysis for publication. A better u...
In 2018, De Los Reyes and Langer expanded the scope of the Evidence Base Updates series to include r...
In this paper, we show how Bayes' theorem can be used to better understand the implications of the 3...
Due to its probabilistic nature, Null Hypothesis Significance Testing (NHST) is subject to decision ...
Psychology journals rarely publish nonsignificant results. At the same time, it is often very unlike...
Recently there has been a growing concern that many published research findings do not hold up in at...
Our job as scientists is to discover truths about the world. We generate hypotheses, collect data, a...
Selectively publishing results that support the tested hypotheses (“positive” results) distorts the ...
There is increasing concern that most current published research findings are false. The probability...
AbstractMethodology described by Francis in “Replication, Statistical Consistency and Publication Bi...
In this paper, we show how Bayes' theorem can be used to better understand the implications of the 3...
<p>This paper has been published in<i> Royal Society Open Science</i>: </p><p><br></p><p>http://rsos...
When studies with positive results that support the tested hypotheses have a higher probability of b...
Abstract. The high fraction of published results that turn out to be incorrect is a major concern of...
Diagnostic screening models for the interpretation of null hypothesis significance test (NHST) resul...
<p><i>Note</i>. <i>P</i>(H<sub>0</sub>) = the <i>a priori</i> probability that the null hypothesis...
In 2018, De Los Reyes and Langer expanded the scope of the Evidence Base Updates series to include r...
In this paper, we show how Bayes' theorem can be used to better understand the implications of the 3...
Due to its probabilistic nature, Null Hypothesis Significance Testing (NHST) is subject to decision ...
Psychology journals rarely publish nonsignificant results. At the same time, it is often very unlike...
Recently there has been a growing concern that many published research findings do not hold up in at...
Our job as scientists is to discover truths about the world. We generate hypotheses, collect data, a...
Selectively publishing results that support the tested hypotheses (“positive” results) distorts the ...
There is increasing concern that most current published research findings are false. The probability...
AbstractMethodology described by Francis in “Replication, Statistical Consistency and Publication Bi...
In this paper, we show how Bayes' theorem can be used to better understand the implications of the 3...
<p>This paper has been published in<i> Royal Society Open Science</i>: </p><p><br></p><p>http://rsos...
When studies with positive results that support the tested hypotheses have a higher probability of b...
Abstract. The high fraction of published results that turn out to be incorrect is a major concern of...
Diagnostic screening models for the interpretation of null hypothesis significance test (NHST) resul...
<p><i>Note</i>. <i>P</i>(H<sub>0</sub>) = the <i>a priori</i> probability that the null hypothesis...
In 2018, De Los Reyes and Langer expanded the scope of the Evidence Base Updates series to include r...
In this paper, we show how Bayes' theorem can be used to better understand the implications of the 3...
Due to its probabilistic nature, Null Hypothesis Significance Testing (NHST) is subject to decision ...