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Learning Associations between Features and Clusters: An Interpretable Deep Clustering Method

机译:特征与聚类之间的学习关联:一种可解释的深度聚类方法

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Clustering is a challenging problem when many features are irrelevant to separate clusters. Also, different clusters may relate to various feature subsets. This work proposes a deep clustering algorithm that localizes the search for instance clusters and their relevant features. The relevant features of each cluster are defined as those with high associations (dependency) within that cluster. Given the number of clusters $K$, we formulate the problem as $K$. -parallel auto-reconstructive learning, where low-rank graph learning, rooted in graph Laplacian theory, is used to explore the unknown feature associations of each cluster. The model performs automatic feature weighting on residuals to minimize loss from the corresponding cluster. Through such design, different feature subsets can be learned to calculate the loss from different clusters. Subsequently, the associations between features and clusters can be acquired, and better clustering result can be achieved. Moreover, the associated features of each cluster can be used to interpret the clustering patterns.
机译:当许多特征与单独的聚类无关时,聚类是一个具有挑战性的问题。此外,不同的聚类可能与不同的特征子集有关。这项工作提出了一种深度聚类算法,用于定位实例聚类及其相关特征的搜索。每个集群的相关特征被定义为该集群内具有高度关联性(依赖性)的特征。考虑到集群的数量

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