2024
DOI: 10.1007/s42979-024-02764-x
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An Improved and Optimized Random Forest Based Approach to Predict the Software Faults

Nikhil Saji Thomas,
S. Kaliraj

Abstract: Effective software fault prediction is crucial for minimizing errors during software development and preventing subsequent failures. This research introduces an enhanced Random Forest-based approach for predicting software faults, specifically focusing on the NASA JM1 dataset. The dataset comprises 21 software metrics indicating the presence or absence of faults in a module, and it is utilized to evaluate the proposed approach. The study delves into the intricacies of the NASA dataset, detailing the cleaning p… Show more

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