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Predicting Breast Cancer using effective Classification with Decision Tree and K Means Clustering technique

机译:使用决策树和K均值聚类技术进行有效分类来预测乳腺癌

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Breast Cancer has been an emerging form of threat to life of women. It leads to death in many cases. It is important to work towards the preventive and precautionary measures for the same. Thus, as a precautionary measure to predict this breast cancer a model has been created. The proposed model thus uses two algorithms namely K-means and Decision Trees to predict Breast Cancer Cells in the human body by using large datasets available.
机译:乳腺癌已经成为威胁妇女生命的一种新兴形式。在许多情况下会导致死亡。重要的是要为此采取预防和预防措施。因此,作为预测该乳腺癌的预防措施,已经创建了模型。因此,所提出的模型使用K-means和决策树这两种算法,通过使用可用的大型数据集来预测人体中的乳腺癌细胞。

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