Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non-significant p-value. However, it is neither logically nor statistically correct to conclude an effect is absent when a hypothesis test is not significant. We present two methods to evaluate the presence or absence of effects: Equivalence testing (based on frequentist statistics) and Bayes factors (based on Bayesian statistics). In four examples from the gerontology literature we illustrate different ways to specify alternative models that can be used to reject the presence of a meaningful or predicted effect in hypothesis tests. We provide detailed explanations of how to calculate, report, and interpret Bayes factors and equivalence tests. W...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
This article provides guidance on interpreting and reporting Bayesian hypothesis tests, to aid their...
Tendeiro and Kiers (2019) provide a detailed and scholarly critique of Null Hypothesis Bayesian Test...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
Being able to interpret ‘null effects?is important for cumulative knowledge generation in science. T...
BACKGROUND: In clinical trials, study designs may focus on assessment of superiority, equivalence, o...
No scientific conclusion follows automatically from a statistically non-significant result, yet peop...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Null hypothesis significance testing (NHST) has been under scrutiny for decades. The literature show...
The p-value quantifies the discrepancy between the data and a null hypothesis of interest, usually t...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
This article provides guidance on interpreting and reporting Bayesian hypothesis tests, to aid their...
Tendeiro and Kiers (2019) provide a detailed and scholarly critique of Null Hypothesis Bayesian Test...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
Being able to interpret ‘null effects?is important for cumulative knowledge generation in science. T...
BACKGROUND: In clinical trials, study designs may focus on assessment of superiority, equivalence, o...
No scientific conclusion follows automatically from a statistically non-significant result, yet peop...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Null hypothesis significance testing (NHST) has been under scrutiny for decades. The literature show...
The p-value quantifies the discrepancy between the data and a null hypothesis of interest, usually t...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
This article provides guidance on interpreting and reporting Bayesian hypothesis tests, to aid their...
Tendeiro and Kiers (2019) provide a detailed and scholarly critique of Null Hypothesis Bayesian Test...