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Improved Framework for Breast Cancer Prediction Using Frequent Itemsets Mining for Attributes Filtering

机译:使用频繁项集挖掘进行属性过滤的乳腺癌预测改进框架

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Data Mining is applicable for pulling up some new information by analyzing the database. It is also used for prediction based on real and actual current data. Breast cancer is a very harmful disease which effects badly to ones social, physical life and also effects mentally. This paper focuses on the attribute filtering techniques i.e frequent itemsets mining with the intention to find the essential and relevant attribute from the Wisconsin breast cancer dataset and classification algorithmic program like SVM, Naive Bayes, k-NN, Decision Tree comparison is done with attribute filtering. SVM produces beat result among all the classifier with attribute filtering.
机译:数据挖掘适用于通过分析数据库提取一些新信息。它也可用于基于实际和实际当前数据进行预测。乳腺癌是一种非常有害的疾病,会对人们的社交,身体生活造成严重影响,并在心理上产生影响。本文着重研究属性过滤技术,即频繁项集挖掘,目的是从威斯康星州乳腺癌数据集中找到必要和相关的属性,并通过分类算法(如SVM,朴素贝叶斯,k-NN)来进行决策算法比较,并通过属性过滤进行。 SVM通过属性过滤在所有分类器之间产生拍子结果。

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