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Fuzzy K-means clustering with missing values.

机译:具有缺失值的模糊K均值聚类。

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摘要

Fuzzy K-means clustering algorithm is a popular approach for exploring the structure of a set of patterns, especially when the clusters are overlapping or fuzzy. However, the fuzzy K-means clustering algorithm cannot be applied when the real-life data contain missing values. In many cases, the number of patterns with missing values is so large that if these patterns are removed, then sufficient number of patterns is not available to characterize the data set. This paper proposes a technique to exploit the information provided by the patterns with the missing values so that the clustering results are enhanced. There are various preprocessing methods to substitute the missing values before clustering the data. However, instead of repairing the data set at the beginning, the repairing can be carried out incrementally in each iteration based on the context. In that case, it is more likely that less uncertainty is added while incorporating the repair work. This scheme is further consolidated in this paper by fine-tuning the missing values using the information from other attributes. The applications of the proposed method in medical domain have produced good performance.
机译:模糊K均值聚类算法是一种探索一组模式结构的流行方法,尤其是当聚类重叠或模糊时。但是,当实际数据包含缺失值时,不能应用模糊K均值聚类算法。在许多情况下,缺少值的模式数量如此之大,以致于如果删除这些模式,那么就没有足够数量的模式来表征数据集。本文提出了一种技术,可以利用缺少值的模式提供的信息,从而增强聚类结果。有多种预处理方法可以在对数据进行聚类之前替换缺失的值。但是,代替在开始时修复数据集,可以在每次迭代中基于上下文逐步进行修复。在这种情况下,合并维修工作的可能性更大。通过使用来自其他属性的信息来微调缺失值,可以在本文中进一步整合该方案。该方法在医学领域的应用取得了良好的效果。

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