An optimized feature selection using fuzzy mutual information based ant colony optimization for software defect prediction

  • Abstract
  • Keywords
  • References
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  • Abstract

    In recent years, there is a significant notification focused towards the prediction of software defect in the field of software engineering. The prediction of software defects assist in reducing the cost of testing effort, improving the process of software testing and to concentrate only on the fault-prone software modules. Recently, software defect prediction is an important research topic in the software engineering field. One of the important factors which effect the software defect detection is the presence of noisy features in the dataset. The objective of this proposed work is to contribute an optimization technique for the selection of potential features to improve the prediction capability of software defects more accurately. The Fuzzy Mutual Information Ant Colony Optimization is used for searching the optimal feature set with the ability of Meta heuristic search. This proposed feature selection efficiency is evaluated using the datasets from NASA metric data repository. Simulation results have indicated that the proposed method makes an impressive enhancement in the prediction of routine for three different classifiers used in this work.

  • Keywords

    Software Defect Prediction; Fuzzy Mutual Information; Ant Colony Optimization; Potential Features

  • References

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Article ID: 9954
DOI: 10.14419/ijet.v7i1.1.9954

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