Statistical significance analysis, based on hypothesis tests, is a common approach for comparing classifiers. However, many studies oversimplify this analysis by simply checking the condition p-value < 0.05, ignoring important concepts such as the effect size and the statistical power of the test. This problem is so worrying that the American Statistical Association has taken a strong stand on the subject, noting that although the p-value is a useful statistical measure, it has been abusively used and misinterpreted. This work highlights problems caused by the misuse of hypothesis tests and shows how the effect size and the power of the test can provide important information for better decision-making. To investigate these issues, we perfor...
While the common procedure of statistical significance testing and its accompanying concept of p-val...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
A common tool used in the process of comparing classifiers is the statistical significance analysis...
Much statistical teaching and many research reports focus on the ‘null hypothesis significance test’...
DOI: 10.1080/00031305.2018.1564697 When the editors of Basic and Applied Social Psych...
DOI: 10.1080/00031305.2018.1564697 When the editors of Basic and Applied Social Psych...
DOI: 10.1080/00031305.2018.1564697 When the editors of Basic and Applied Social Psych...
The overuse of p-values to dichotomize the results of research studies as being either significant o...
Significance testing has become a mainstay in machine learning, with the p value being firmly embedd...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
While the common procedure of statistical significance testing and its accompanying concept of p-val...
Statistical significance (or hypothesis) tests, and the related concept of p-values, are popular too...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
While the common procedure of statistical significance testing and its accompanying concept of p-val...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
A common tool used in the process of comparing classifiers is the statistical significance analysis...
Much statistical teaching and many research reports focus on the ‘null hypothesis significance test’...
DOI: 10.1080/00031305.2018.1564697 When the editors of Basic and Applied Social Psych...
DOI: 10.1080/00031305.2018.1564697 When the editors of Basic and Applied Social Psych...
DOI: 10.1080/00031305.2018.1564697 When the editors of Basic and Applied Social Psych...
The overuse of p-values to dichotomize the results of research studies as being either significant o...
Significance testing has become a mainstay in machine learning, with the p value being firmly embedd...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
While the common procedure of statistical significance testing and its accompanying concept of p-val...
Statistical significance (or hypothesis) tests, and the related concept of p-values, are popular too...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
While the common procedure of statistical significance testing and its accompanying concept of p-val...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...
Many people regard the concept of hypothesis testing as fundamental to inferential statistics. Vario...