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A Creditable Subspace Labeling Method Based on D-S Evidence Theory

机译:基于D-S证据理论的可信子空间标记方法

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Due to inherent sparse, noise and nearly zero difference characteristics of high dimensional data sets, traditional clustering methods fails to detect meaningful clusters in them. Subspace clustering attempts to find the true distribution inherent to the subsets with original attributes. However, which subspace contains the true clustering result is usually uncertain. From this point of view, subspace clustering can be regarded as an uncertain discursion problem. In this paper, we firstly develop the criterion to evaluate creditable subspaces which contain the meaningful clustering results, and then propose a creditable subspace labeling method (CSL) based on D-S evidence theory. The creditable subspaces of the original data space can be found by iteratively executing the algorithm CSL. Once the creditable subspaces are got, the true clustering results can be found using a traditional clustering algorithm on each creditable subspace. Experiments show that CSL can detect the actual creditable subspace with the original attribute. In this way, a novel approach of clustering problems using traditional clustering algorithms to deal with high dimension data sets is proposed.
机译:由于固有的稀疏,噪声和高零差的高维数据集的特征,传统的聚类方法无法检测到它们中的有意义的群集。子空间群集尝试发现具有原始属性的子集固有的真正分布。但是,哪些子空间包含真正的聚类结果通常是不确定的。从这个角度来看,子空间聚类可以被视为一个不确定的消声问题。在本文中,我们首先制定了评估包含有意义的聚类结果的可信子空间的标准,然后根据D-S证据理论提出可信子空间标签方法(CSL)。可以通过迭代地执行算法CSL来找到原始数据空间的可信子空间。一旦获得可信子空间,可以使用每个可信子空间上的传统聚类算法找到真正的聚类结果。实验表明,CSL可以使用原始属性检测实际可信子空间。以这种方式,提出了一种使用传统聚类算法来处理高维数据集的聚类问题的新方法。

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