首页> 外文会议>IASTED International Conference on Biomedical Engineering >HIGH ACCURACY BACK-RETREAT DIFFUSION-FUZZY CLUSTERING OF BREAST CANCER DATA FOR THE DETECTION OF MALIGNANCY
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HIGH ACCURACY BACK-RETREAT DIFFUSION-FUZZY CLUSTERING OF BREAST CANCER DATA FOR THE DETECTION OF MALIGNANCY

机译:高精度后退撤退扩散 - 模糊聚类乳腺癌数据检测恶性肿瘤

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A novel fuzzy clustering method has been proposed here for separating the breast cancer data, which operates with reasonable accuracy, allows flexibility in dataset and is modestly time consuming. This method can be applied to any type of cancer data set with some initial labels to obtain high accuracy result in the classification of unlabeled samples. Further, the curse of dimensionality is not an issue for the proposed scheme as it can be applied to data having any number of dimensions or attributes. The Dif-FUZZY unsupervised clustering algorithm is applied at the initial stage, giving an accuracy of 96.28% over Wisconsin Breast Cancer Dataset (WBCD); the result is further improved to 98.14% by using the proposed Back-Retreat algorithm. The formed clusters are estimated using three internal cluster validation indices and the performance of the method is evaluated using receiver operating characteristic (ROC) curves. The clustering algorithm is compared with Fuzzy C-Means (FCM) algorithm and the results are compared with different classifiers and clustering techniques.
机译:这里提出了一种新的模糊聚类方法,用于分离以合理的精度运行的乳腺癌数据,允许在数据集中灵活性,并且适度耗时。该方法可以应用于具有一些初始标签的任何类型的癌症数据集,以获得高精度导致未标记样本的分类。此外,维度的诅咒不是所提出的方案的问题,因为它可以应用于具有任何数量的维度或属性的数据。在初始阶段施加差异无预测的聚类算法,在威斯康星乳腺癌数据集(WBCD)上的准确度为96.28%;通过使用所提出的反撤回算法,结果进一步提高到98.14%。使用三个内部群集验证指数估计形成的集群,使用接收器操作特性(ROC)曲线评估该方法的性能。将聚类算法与模糊C型方式(FCM)算法进行比较,并将结果与​​不同的分类器和聚类技术进行比较。

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