The need for accurate software prediction systems increases as software becomes much larger and more complex. We believe that the underlying characteristics: size, number of features, type of distribution, etc., of the data set influence the choice of the prediction system to be used. For this reason, we would like to control the characteristics of such data sets in order to systematically explore the relationship between accuracy, choice of prediction system, and data set characteristic. It would also be useful to have a large validation data set. Our solution is to simulate data allowing both control and the possibility of large (1000) validation cases. The authors compare four prediction techniques: regression, rule induction, nearest ne...
To get a better prediction of costs, schedule, and the risks of a software project, it is necessary ...
During the last 10 years, hundreds of different defect prediction models have been published. The p...
Statistical methods based on a regression model plus a zero-mean Gaussian process (GP) have been wi...
Empirical studies on software prediction models do not converge with respect to the question "which ...
Abstract—Empirical studies on software prediction models do not converge with respect to the questio...
A potential methodological problem with empirical studies that assess project effort prediction syst...
BACKGROUND: Prediction e.g. of project cost is an important concern in software engineering. PROBLEM...
Context Software engineering has a problem in that when we empirically evaluate competing predict...
For some years software engineers have been attempting to develop useful prediction systems to estim...
For some years software engineers have been attempting to develop useful prediction systems to estim...
Whilst some software measurement research has been unquestionably successful, other research has str...
Whilst some software measurement research has been unquestionably successful, other research has str...
Whilst some software measurement research has been unquestionably successful, other research has str...
Open Access: This article is distributed under the terms of the Creative Commons Attribution 4.0 Int...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
To get a better prediction of costs, schedule, and the risks of a software project, it is necessary ...
During the last 10 years, hundreds of different defect prediction models have been published. The p...
Statistical methods based on a regression model plus a zero-mean Gaussian process (GP) have been wi...
Empirical studies on software prediction models do not converge with respect to the question "which ...
Abstract—Empirical studies on software prediction models do not converge with respect to the questio...
A potential methodological problem with empirical studies that assess project effort prediction syst...
BACKGROUND: Prediction e.g. of project cost is an important concern in software engineering. PROBLEM...
Context Software engineering has a problem in that when we empirically evaluate competing predict...
For some years software engineers have been attempting to develop useful prediction systems to estim...
For some years software engineers have been attempting to develop useful prediction systems to estim...
Whilst some software measurement research has been unquestionably successful, other research has str...
Whilst some software measurement research has been unquestionably successful, other research has str...
Whilst some software measurement research has been unquestionably successful, other research has str...
Open Access: This article is distributed under the terms of the Creative Commons Attribution 4.0 Int...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
To get a better prediction of costs, schedule, and the risks of a software project, it is necessary ...
During the last 10 years, hundreds of different defect prediction models have been published. The p...
Statistical methods based on a regression model plus a zero-mean Gaussian process (GP) have been wi...