Fault Prediction Modeling for the Prediction of Number of Software Faults

Santosh Singh Rathore, Sandeep Kumar

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Springer Singapore img Link Publisher

Naturwissenschaften, Medizin, Informatik, Technik / Informatik

Beschreibung

This book addresses software faults—a critical issue that not only reduces the quality of software, but also increases their development costs. Various models for predicting the fault-proneness of software systems have been proposed; however, most of them provide inadequate information, limiting their effectiveness. This book focuses on the prediction of number of faults in software modules, and provides readers with essential insights into the generalized architecture, different techniques, and state-of-the art literature. In addition, it covers various software fault datasets and issues that crop up when predicting number of faults. 

A must-read for readers seeking a “one-stop” source of information on software fault prediction and recent research trends, the book will especially benefit those interested in pursuing research in this area. At the same time, it will provide experienced researchers with a valuable summary of the latest developments.

 

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Schlagwörter

Software Fault Prediction, Software Engineering, Testing, Quality Assurance, Learning Models, Number of Fault Prediction, Soft Computing and Machine Learning, Ensemble Methods