Fr. 238.00

Machine-Learning-Assisted Software Defect Prediction

Inglese · Copertina rigida

Pubblicazione il 23.10.2025

Descrizione

Ulteriori informazioni

This book focuses on software defect prediction (SDP) in order to avoid threats related to quality, reliability and safety. It details advanced machine/deep learning technologies to discuss strategies for identifying and preventing such issues, and introduces innovative approaches to address feature irrelevance and redundancy, data imbalance in defect data, selection of representative module subsets for cross-version defect prediction, and managing data distribution variances in cross-project defect prediction.
The book is organized into eight chapters, systematically covering various aspects of software defect prediction.  First, chapter 1 Introduction explains the socio-economic significance and importance of software defect prediction. Next, chapter 2 Literature Review reviews and analyzes current technologies and their applications in defect prediction. Then chapter 3 Feature Learning discusses how to extract effective features from software engineering data using machine learning techniques. While chapter 4 Handling Class Imbalance introduces strategies to address the class imbalance in software defect data, chapter 5 Cross-Version Defect Prediction analyzes the application of historical version data to enhance the accuracy of prediction models. Subsequently, chapter 6 Cross-Project Defect Prediction discusses how to mitigate data discrepancies between projects through transfer learning, and chapter 7 Effort-Aware Defect Prediction delves into new technologies to rank software modules based on the defect density. Eventually, chapter 8 Conclusion and Future Trends summarizes the book and outlines future research directions.
The book mainly targets academic researchers and graduate students, particularly those focusing on the intersection of software engineering and machine learning. It is also intended for software engineers and data scientists working on enhancing the quality and safety of software.

Sommario

1. Introduction.- 2. Categories of Defect Prediction.- 3. Feature Representation-based Defect Prediction.- 4. Class Imbalanced Learning-based Defect Prediction.- 5. Cross-Version Defect Prediction.- 6. Cross-Project Defect Prediction.- 7. Effort-Aware Defect Prediction.- 8. Conclusion and Future Work.

Info autore

Zhou Xu was an assistant professor in the School of Big Data and Software Engineering at Chongqing University, China, from 2020 to 2022. His research interests encompass software defect prediction, empirical software engineering, feature engineering, and data mining. He has published more than 50 papers in international journals and conferences, among them IEEE Transactions on Software Engineering, IEEE Transactions on Reliability, Journal of System and Software, ASE or ISSRE.

Riassunto

This book focuses on software defect prediction (SDP) in order to avoid threats related to quality, reliability and safety. It details advanced machine/deep learning technologies to discuss strategies for identifying and preventing such issues, and introduces innovative approaches to address feature irrelevance and redundancy, data imbalance in defect data, selection of representative module subsets for cross-version defect prediction, and managing data distribution variances in cross-project defect prediction.
The book is organized into eight chapters, systematically covering various aspects of software defect prediction.  First, chapter 1 “Introduction“ explains the socio-economic significance and importance of software defect prediction. Next, chapter 2 “Literature Review“ reviews and analyzes current technologies and their applications in defect prediction. Then chapter 3 “Feature Learning“ discusses how to extract effective features from software engineering data using machine learning techniques. While chapter 4 “Handling Class Imbalance“ introduces strategies to address the class imbalance in software defect data, chapter 5 “Cross-Version Defect Prediction“ analyzes the application of historical version data to enhance the accuracy of prediction models. Subsequently, chapter 6 “Cross-Project Defect Prediction“ discusses how to mitigate data discrepancies between projects through transfer learning, and chapter 7 “Effort-Aware Defect Prediction“ delves into new technologies to rank software modules based on the defect density. Eventually, chapter 8 “Conclusion and Future Trends“ summarizes the book and outlines future research directions.
The book mainly targets academic researchers and graduate students, particularly those focusing on the intersection of software engineering and machine learning. It is also intended for software engineers and data scientists working on enhancing the quality and safety of software.

Dettagli sul prodotto

Autori Zhou Xu
Editore Springer, Berlin
 
Lingue Inglese
Formato Copertina rigida
Pubblicazione 23.10.2025, ritardato
 
EAN 9783032013354
ISBN 978-3-0-3201335-4
Pagine 440
Illustrazioni XII, 440 p. 110 illus., 102 illus. in color.
Categorie Scienze naturali, medicina, informatica, tecnica > Informatica, EDP > Informatica

Künstliche Intelligenz, machine learning, Software Engineering, Artificial Intelligence, software development, software quality assurance, software reliability, software defect prediction

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