In 2014 we published a meta-analysis of software defect prediction studies [1] . This suggested that the most important factor in determining results was Research Group, i.e., who conducts the experiment is more important than the classifier algorithms being investigated. A recent re-analysis [2] sought to argue that the effect is less strong than originally claimed since there is a relationship between Research Group and Dataset. In this response we show (i) the re-analysis is based on a small (21 percent) subset of our original data, (ii) using the same re-analysis approach with a larger subset shows that Research Group is more important than type of Classifier and (iii) however the data are analysed there is compelling evidence that who ...
Most empirical disciplines promote the reuse and sharing of datasets, as it leads to greater poss...
The thought processes of people have a significant impact on software quality, as software is design...
This dataset is about a systematic review of unsupervised learning techniques for software defect pr...
In 2014 we published a meta-analysis of software defect prediction studies [1] . This suggested that...
IEEE In 2014 we published a meta-analysis of software defect prediction studies [1]. This suggested ...
© 2017 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Background. The ability to predict defect-prone software components would be valuable. Consequently,...
Background. The ability to predict defect-prone software components would be valuable. Consequently,...
Researcher bias occurs when researchers influence the results of an empirical study based on their e...
Context The trustworthiness of research results is a growing concern in many empirical disciplines. ...
Context: Conducting experiments is central to research machine learning research to benchmark, evalu...
Researcher Bias (RB) occurs when researchers influence the results of an empirical study based on th...
In cognitive psychology, confirmation bias is defined as the tendency of people to verify hypotheses...
examined the form of receiver operating characteristic (ROC) curves for reasoning and the effects of...
Background: There has been much discussion amongst auto-mated software defect prediction researchers...
Most empirical disciplines promote the reuse and sharing of datasets, as it leads to greater poss...
The thought processes of people have a significant impact on software quality, as software is design...
This dataset is about a systematic review of unsupervised learning techniques for software defect pr...
In 2014 we published a meta-analysis of software defect prediction studies [1] . This suggested that...
IEEE In 2014 we published a meta-analysis of software defect prediction studies [1]. This suggested ...
© 2017 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Background. The ability to predict defect-prone software components would be valuable. Consequently,...
Background. The ability to predict defect-prone software components would be valuable. Consequently,...
Researcher bias occurs when researchers influence the results of an empirical study based on their e...
Context The trustworthiness of research results is a growing concern in many empirical disciplines. ...
Context: Conducting experiments is central to research machine learning research to benchmark, evalu...
Researcher Bias (RB) occurs when researchers influence the results of an empirical study based on th...
In cognitive psychology, confirmation bias is defined as the tendency of people to verify hypotheses...
examined the form of receiver operating characteristic (ROC) curves for reasoning and the effects of...
Background: There has been much discussion amongst auto-mated software defect prediction researchers...
Most empirical disciplines promote the reuse and sharing of datasets, as it leads to greater poss...
The thought processes of people have a significant impact on software quality, as software is design...
This dataset is about a systematic review of unsupervised learning techniques for software defect pr...