GENETIC ALGORITHM AND RANDOM FOREST CLASSIFIER FUSION: A CUTTING-EDGE APPROACH FOR BREAST CANCER DIAGNOSIS

Veeramani Veerapathran, Faiza Bait Ali Suleiman, Antonyraj Martin, Rajesh Menon K
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Abstract

Breast cancer was a significant cause of mortality in women worldwide, highlighting the importance of early detection in improving patient survival rates. Although machine learning algorithms had shown effectiveness in diagnosing breast cancer, there was still room for improvement. This paper introduced a ground-breaking method that combined Genetic Algorithms (GAs) with Random Forest Classifiers (RFCs) for breast cancer diagnosis. GA’s were used to select the most informative features from the breast cancer dataset, while RFCs were employed to classify the data into cancerous and non-cancerous cases. The proposed approach was evaluated on a publicly available breast cancer dataset, and the results demonstrated a remarkable accuracy of 79.31%, surpassing the accuracy of RFCs without GA-based feature selection (77.58%). This innovative approach held great promise in improving the accuracy of early diagnosis and potentially saving lives. By leveraging the strengths of GAs and RFCs, this novel approach offered an effective means of diagnosing breast cancer and had the potential to revolutionize early detection practices.
遗传算法与随机森林分类器的融合:乳腺癌诊断的前沿方法
乳腺癌是全球妇女死亡的一个重要原因,这凸显了早期检测对提高患者生存率的重要性。虽然机器学习算法在诊断乳腺癌方面显示出了有效性,但仍有改进的余地。本文介绍了一种结合遗传算法(GA)和随机森林分类器(RFC)的开创性方法,用于乳腺癌诊断。遗传算法用于从乳腺癌数据集中选择信息量最大的特征,而随机森林分类器则用于将数据分为癌症和非癌症病例。在一个公开的乳腺癌数据集上对所提出的方法进行了评估,结果表明其准确率高达 79.31%,超过了不使用基于 GA 的特征选择的 RFC 的准确率(77.58%)。这种创新方法在提高早期诊断准确率和挽救生命方面大有可为。通过利用遗传算法和 RFC 的优势,这种新方法提供了诊断乳腺癌的有效手段,并有可能彻底改变早期检测实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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