Important Issues in Software Fault Prediction

Author:

Abaei Golnoush1,Selamat Ali1

Affiliation:

1. University Technology Malaysia, Malaysia

Abstract

Quality assurance tasks such as testing, verification and validation, fault tolerance, and fault prediction play a major role in software engineering activities. Fault prediction approaches are used when a software company needs to deliver a finished product while it has limited time and budget for testing it. In such cases, identifying and testing parts of the system that are more defect prone is reasonable. In fact, prediction models are mainly used for improving software quality and exploiting available resources. Software fault prediction is studied in this chapter based on different criteria that matters in this research field. Usually, there are certain issues that need to be taken care of such as different machine-learning techniques, artificial intelligence classifiers, variety of software metrics, distinctive performance evaluation metrics, and some statistical analysis. In this chapter, the authors present a roadmap for those researchers who are interested in working in this area. They illustrate problems along with objectives related to each mentioned criterion, which could assist researchers to build the finest software fault prediction model.

Publisher

IGI Global

Reference108 articles.

1. Abaei, G., Rezaei, Z., & Selamat, A. (2013). Fault prediction by utilizing self-organizing Map and Threshold. In Proceedings of Control System, Computing and Engineering (ICCSCE), 2013 IEEE International Conference on (pp. 465-470). Malaysia: IEEE.

2. Abaei, G., & Selamat, A. (2013). A survey on software fault detection based on different prediction approaches. Vietnam Journal of Computer Science, 1-17.

3. Abreu, F. B., & Carapuça, R. (1994). Object-oriented software engineering: Measuring and controlling the development process. In Proceedings of the 4th International Conference on Software Quality (Vol. 186). IEEE.

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