聚类中的暗斑

Waqar Ishaq, Eliya Buyukkaya
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引用次数: 1

摘要

这项调查突出了在集群中阻碍实现最优解决方案或产生不一致输出的问题。我们称这种恶性肿瘤为黑斑。我们关注与聚类相关的问题,而不是聚类的概念和技术。为了更好地了解聚类问题,我们将暗补丁分为三类,然后比较不同的聚类方法来分析分布式数据集,相对于暗补丁的类别,而不是传统的性能和准确性比较方法,因为在无监督学习中,由于缺乏标记数据,性能和准确性可能会提供误导性的结论。据我们所知,这个主要特征使我们的调查论文与其他聚类调查论文不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dark patches in clustering
This survey highlights issues in clustering which hinder in achieving optimal solution or generates inconsistent outputs. We called such malignancies as dark patches. We focus on the issues relating to clustering rather than concepts and techniques of clustering. For better insight into the issues of clustering, we categorize dark patches into three classes and then compare various clustering methods to analyze distributed datasets with respect to classes of dark patches rather than conventional way of comparison by performance and accuracy criteria, because performance and accuracy may provide misleading conclusions due to lack of labeled data in unsupervised learning. To the best of our knowledge, this prime feature makes our survey paper unique from other clustering survey papers.
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