Genetic evolutionary learning fitness function (GELFF) for feature diagnosis to software fault prediction

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Abstract

Nowadays, proper feature selection f+orFault prediction is very perplexing task. Improper feature selection may lead to bad result. To avoid this, there is a need to find the aridity of software fault. This is achieved by finding the fitness of the evolutionaryAlgorithmic function. In this paper, we finalize the Genetic evolutionarynature of our Feature set with the help of Fitness Function. Feature Selection is the objective of the prediction model tocreate the underlying process of generalized data. The wide range of data like fault dataset, need the better objective function is obtained by feature selection, ranking, elimination and construction. In this paper, we focus on finding the fitness of the machine learning function which is used in the diagnostics of fault in the software for the better classification.

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Patchaiammal, P., & Thirumalaiselvi, R. (2019). Genetic evolutionary learning fitness function (GELFF) for feature diagnosis to software fault prediction. International Journal of Innovative Technology and Exploring Engineering, 8(11 Special Issue), 1151–1161. https://doi.org/10.35940/ijitee.K1233.09811S19

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