使用极端随机聚类森林(ERCF)技术预测乳腺癌:预测乳腺癌

Akhil Gupta, Rohit Anand, D. Pandey, Nidhi Sindhwani, Subodh Wairya, B. Pandey, Manvinder Sharma
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引用次数: 4

摘要

乳腺癌确实是发达国家和发展中国家女性人口中一个重大的公共卫生问题。在所有女性中,几乎有三分之一的人被诊断出患有癌症。数据挖掘和模式识别相结合的应用已被证明是非常有用和相关的,以提取对医疗目的有用的信息。本研究工作反映了基于极度随机聚类森林(ERCF)技术的工作,该技术是一种模式识别技术,可以作为乳腺癌(BC)的预测模型实现。在这项研究工作中,通过ERCF获得的准确性也与k-NN(相关)和k-NN(欧几里得)的准确性进行了比较(其中k-NN指的是k-最近邻技术),然后根据测试属性得出最终结论。结果表明,ERCF预测乳腺癌的准确率远远高于k-NN(Correlation)和k-NN(Euclidean)的准确率。因此,用于模式分类的随机化技术ERCF是最好的选择
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Breast Cancer Using Extremely Randomized Clustering Forests (ERCF) Technique: Prediction of Breast Cancer
cancer in breast indeed a significant public health concern in both developed and developing countries female population. It is almost one in three cancers diagnosed in all women. Data mining and pattern recognition applications in conjunction have been proven to be quite useful and relevant to extract the information useful for the medical purpose. This research work reflects the work based on Extremely Randomized Clustering Forests (ERCF) technique which is nothing but a type of pattern recognition technique that may be implemented as the prediction model for Breast Cancer (BC). The accuracy achieved through ERCF has also been compared with that of k-NN(Correlation) and k-NN(Euclidean) in this research work (where k-NN refers to k-Nearest Neighbours technique) and thereafter, final conclusions have been drawn depending upon the testing attributes. The results show that the accuracy of ERCF in the forecasting of breast cancer is so much larger than that of the exactness of k-NN(Correlation) and k-NN(Euclidean). Hence, ERCF, a randomized technique for pattern classification, is best
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