Towards Optimized K Means Clustering using Nature-inspired Algorithms for Software Bug Prediction

Abstract

In today s software development environment the necessity for providing quality software products has undoubtedly remained the largest difficulty As a result early software bug prediction in the development phase is critical for lowering maintenance costs and improving overall software performance Clustering is a well-known unsupervised method for data classification and finding related patterns hidden in dataset

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Global Journal of Computer Science and Technology (GJCST)

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Last time updated on 20/06/2023

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