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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Discriminative Nonnegative Spectral Clustering with Out-of-Sample Extension
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Discriminative Nonnegative Spectral Clustering with Out-of-Sample Extension

机译:样本外扩展的歧视性非负谱聚类

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摘要

Data clustering is one of the fundamental research problems in data mining and machine learning. Most of the existing clustering methods, for example, normalized cut and $(k)$-means, have been suffering from the fact that their optimization processes normally lead to an NP-hard problem due to the discretization of the elements in the cluster indicator matrix. A practical way to cope with this problem is to relax this constraint to allow the elements to be continuous values. The eigenvalue decomposition can be applied to generate a continuous solution, which has to be further discretized. However, the continuous solution is probably mixing-signed. This result may cause it deviate severely from the true solution, which should be naturally nonnegative. In this paper, we propose a novel clustering algorithm, i.e., discriminative nonnegative spectral clustering, to explicitly impose an additional nonnegative constraint on the cluster indicator matrix to seek for a more interpretable solution. Moreover, we show an effective regularization term which is able to not only provide more useful discriminative information but also learn a mapping function to predict cluster labels for the out-of-sample test data. Extensive experiments on various data sets illustrate the superiority of our proposal compared to the state-of-the-art clustering algorithms.
机译:数据聚类是数据挖掘和机器学习中的基础研究问题之一。大多数现有的聚类方法(例如归一化割和(k)$-均值)一直遭受以下事实的困扰:由于聚类指标中元素的离散化,其优化过程通常会导致NP难题。矩阵。解决此问题的一种实用方法是放宽此约束,以使元素成为连续值。特征值分解可用于生成连续解,必须进一步离散化。但是,连续解可能是混合签名的。此结果可能导致其严重偏离真实的解决方案,而该解决方案自然应该是非负的。在本文中,我们提出了一种新颖的聚类算法,即判别性非负谱聚类,以在聚类指标矩阵上明确施加附加的非负约束,以寻求更可解释的解决方案。此外,我们展示了一个有效的正则化术语,它不仅能够提供更多有用的判别信息,而且还能学习映射功能,以预测样本外测试数据的聚类标签。与各种最新的聚类算法相比,在各种数据集上进行的大量实验证明了我们的建议的优越性。

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