2022
DOI: 10.48129/kjs.18331
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A hybrid approach based on k-nearest neighbors and decision tree for software fault prediction

Abstract: Software testing is a very important part of the software development life cycle to develop reliable and bug-free software but it consumes a lot of resources like development time, cost, and effort. Researchers have developed many techniques to get prior knowledge of fault-prone modules so that testing time and cost can be reduced. In this research article, a hybrid approach of distance-based pruned classification and regression tree (CART) and k- nearest neighbors is proposed to improve the performance of sof… Show more

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