Evaluation of Ensemble Machines in Breast Cancer Prediction

S. LeenaNesamani, S. NirmalaSugirthaRajini
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引用次数: 2

Abstract

Breast cancer is one of the most deadly diseases encountered among women for which the cause is not clearly defined yet. Early diagnosis may help the physicians in the treatment of this deadly disease which could turn out fatal otherwise. Machine Learning techniques are employed in the process of detecting breast cancer with greater accuracy. Individual classifiers employed in this process, predicted the disease with less accuracy when compared with ensemble models. Ensemble methods employ a group of classifiers to individually classify the data. It then combines the result of the individual classifiers using weighted voting of their predictions. Ensemble machines perform better than individual models and show improved levels in the accuracy of the prediction system. This paper examines and evaluates different ensemble machines that are used in the prediction of breast cancer and tries to identify the combinations that prove to be better than the existing ones.
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集成机器在乳腺癌预测中的评价
乳腺癌是妇女中最致命的疾病之一,其病因尚未明确。早期诊断可以帮助医生治疗这种致命的疾病,否则可能会致命。在检测乳腺癌的过程中使用了机器学习技术,其准确性更高。与集成模型相比,在此过程中使用的个体分类器预测疾病的准确性较低。集成方法使用一组分类器对数据进行单独分类。然后,它将使用对其预测进行加权投票的单个分类器的结果组合在一起。集成机器比单个模型表现得更好,并且在预测系统的准确性方面显示出更高的水平。本文检查和评估了用于预测乳腺癌的不同集成机器,并试图识别出比现有组合更好的组合。
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