乳腺癌预测系统:一种基于多数投票的混合分类器(MBHC)预测准确率的新方法

P. Sivakumar, T. U. Lakshmi, N. Reddy, R. Pavani, V. Chaitanya
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引用次数: 0

摘要

乳腺癌是女性中最常见的癌症,也是女性死亡率上升的重要原因。人工诊断需要花费更多的时间,目前很少有自动预测系统,这导致建立了一种新的预测框架,可以在早期阶段识别肿瘤,预测精度更高。机器学习算法正在使用许多分类算法来分类肿瘤是良性的还是恶性的。分类算法从以前的数据中得到很好的训练,这些算法可以从当前接收的数据中预测新的模式。现有的乳腺癌自动预测系统对乳腺癌数据集的预测精度较低,而且数据集只包含图像属性,对用户来说不太方便。为了提高各种预测模型的准确性,提出了一种新的基于多数投票的混合分类器(MBHC)来克服预测乳腺癌的问题。使用MBHC的乳腺癌预测系统的实验结果显示准确率达到79%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Breast Cancer Prediction System: A novel approach to predict the accuracy using Majority-Voting Based Hybrid Classifier (MBHC)
Breast Cancer is the frequently recognized cancer growth among ladies and a significant explanation behind the expanded death rate among ladies. It takes more time to diagnose manually and very few automated prediction systems were present, leads to building up a new prediction framework that identifies the tumors in early-stage with more prediction accuracy. Machine Learning algorithms are using numerous classification algorithms were applied to classify whether the tumors are either benign or malignant in nature. Classification algorithms are well trained from the previous data and these can predict the new pattern from the current data received. Existing automated Breast Cancer prediction system gave lesser prediction accuracy from the Breast Cancer data set and the dataset is only about the image attributes which is not much convenient for the users. To enhance the accuracy of various prediction models, a novel Majority-Voting Based Hybrid Classifier (MBHC) is proposed to overcome the problems of predicting Breast Cancer. The experimental results of Breast Cancer Prediction System which use MBHC produced an accuracy score of 79%.
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