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On Information-Maximization Clustering: Tuning Parameter Selection and Analytic Solution

机译:关于信息 - 最大化聚类:调整参数选择和分析解决方案

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Information-maximization clustering learns a probabilistic classifier in an unsupervised manner so that mutual information between feature vectors and cluster assignments is maximized. A notable advantage of this approach is that it only involves continuous optimization of model parameters, which is substantially easier to solve than discrete optimization of cluster assignments. However, existing methods still involve non-convex optimization problems, and therefore finding a good local optimal solution is not straightforward in practice. In this paper, we propose an alternative information-maximization clustering method based on a squared-loss variant of mutual information. This novel approach gives a clustering solution analytically in a computationally efficient way via kernel eigenvalue decomposition. Furthermore, we provide a practical model selection procedure that allows us to objectively optimize tuning parameters included in the kernel function. Through experiments, we demonstrate the usefulness of the proposed approach.
机译:信息 - 最大化群集以无监督方式学习概率分类器,以便在特征向量和群集分配之间的互信息最大化。这种方法的显着优点是它仅涉及模型参数的连续优化,这基本上可以更容易地解决,而不是集群分配的离散优化。然而,现有方法仍然涉及非凸优化问题,因此在实践中找到了良好的本地最佳解决方案。在本文中,我们提出了一种基于相互信息的平方损耗变体的替代信息最大化聚类方法。这种新方法通过内核特征值分解以计算有效的方式分析了聚类解决方案。此外,我们提供了一个实用的模型选择过程,允许我们客观地优化包含在内核功能中的调整参数。通过实验,我们证明了所提出的方法的有用性。

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