Cross-Project Change Prediction Using Meta-Heuristic Techniques

Author:

Bansal Ankita1,Jajoria Sourabh1

Affiliation:

1. Netaji Subhas Institute of Technology, Delhi, India

Abstract

Changes in software systems are inevitable. Identification of change-prone modules can help developers to focus efforts and resources on them. In this article, the authors conduct various intra-project and cross-project change predictions. The authors use distributional characteristics of dataset to generate rules which can be used for successful change prediction. The authors analyze the effectiveness of meta-heuristic decision trees in generating rules for successful cross-project change prediction. The employed meta-heuristic algorithms are hybrid decision tree genetic algorithms and oblique decision trees with evolutionary learning. The authors compare the performance of these meta-heuristic algorithms with C4.5 decision tree model. The authors observe that the accuracy of C4.5 decision tree is 73.33%, whereas the accuracy of the hybrid decision tree genetic algorithm and oblique decision tree are 75.00% and 75.56%, respectively. These values indicate that distributional characteristics are helpful in identifying suitable training set for cross-project change prediction.

Publisher

IGI Global

Subject

Decision Sciences (miscellaneous),Computational Mathematics,Computational Theory and Mathematics,Control and Optimization,Computer Science Applications,Modeling and Simulation,Statistics and Probability

Reference29 articles.

1. Bala, J., Huang, J., Vafaie, H., DeJong, K., & Wechsler, H. (1995, August). Hybrid learning using genetic algorithms and decision trees for pattern classification. In Proceedings of the 14th international joint conference on Artificial intelligence (Vol. 1, pp. 719-724).

2. Empirical analysis of search based algorithms to identify change prone classes of open source software

3. Mythical Man-Month.;F. P.Brooks;Datamation,1974

4. Combining evolutionary algorithms with oblique decision trees to detect bent-double galaxies

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