A FUZZY CO-CLUSTERİNG ALGORİTHM FOR BİOMEDİCAL DATA

Aynur Jabiyeva Aynur Jabiyeva
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Abstract

In order to increase the accuracy of clustering biomedical data, fuzzy co-clustering extends co-clustering by applying membership functions to both the objects and the characteristics. In this research, we provide a novel information bottleneck-based fuzzy co-clustering algorithm called ibFCC. The distance between a feature data point and the feature cluster centroid is calculated using the information bottleneck theory by the objective function called the ibFCC. Using five biomedical datasets, numerous experiments were done, and the ibFCC was compared to well-known fuzzy (co-)clustering algorithms as FCM, FCCM, RFCC, and FCCI. According to experimental data, ibFCC could produce high-quality clusters and was more accurate than any of these approaches
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bİomedİcal数据的模糊co-clusterİng algorİthm
为了提高生物医学数据聚类的精度,模糊共聚类对共聚类进行了扩展,将隶属函数应用于对象和特征。本文提出了一种基于信息瓶颈的模糊共聚类算法ibFCC。利用信息瓶颈理论,通过目标函数ibFCC计算特征数据点与特征聚类质心之间的距离。利用5个生物医学数据集进行了大量实验,并将ibFCC与FCM、FCCM、RFCC和FCCI等著名的模糊(共)聚类算法进行了比较。实验数据表明,ibFCC可以产生高质量的聚类,并且比上述任何一种方法都更准确
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