A Hybrid Feature Selection Model for Software Fault Prediction
Software fault prediction plays a vital role in software quality assurance. Identifying the faulty modules helps to better concentrate on those modules and helps improve the quality of the software. With increasing complexity of software nowadays feature selection is important to remove the redundant, irrelevant and erroneous data from the dataset. In general, feature selection is done mainly based on filter and wrapper. In this paper, a hybrid feature selection method is proposed which gives a better prediction than the traditional methods.