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Robust Clustering Using Outlier-Sparsity Regularization

机译:使用异常稀疏正则化的鲁棒聚类

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Notwithstanding the popularity of conventional clustering algorithms such as K-means and probabilistic clustering, their clustering results are sensitive to the presence of outliers in the data. Even a few outliers can compromise the ability of these algorithms to identify meaningful hidden structures rendering their outcome unreliable. This paper develops robust clustering algorithms that not only aim to cluster the data, but also to identify the outliers. The novel approaches rely on the infrequent presence of outliers in the data, which translates to sparsity in a judiciously chosen domain. Leveraging sparsity in the outlier domain, outlier-aware robust K-means and probabilistic clustering approaches are proposed. Their novelty lies on identifying outliers while effecting sparsity in the outlier domain through carefully chosen regularization. A block coordinate descent approach is developed to obtain iterative algorithms with convergence guarantees and small excess computational complexity with respect to their non-robust counterparts. Kernelized versions of the robust clustering algorithms are also developed to efficiently handle high-dimensional data, identify nonlinearly separable clusters, or even cluster objects that are not represented by vectors. Numerical tests on both synthetic and real datasets validate the performance and applicability of the novel algorithms.
机译:尽管常规聚类算法(例如K均值和概率聚类)很受欢迎,但是它们的聚类结果对数据中异常值的存在很敏感。即使是少数异常值也可能会损害这些算法识别有意义的隐藏结构的能力,从而导致其结果不可靠。本文开发了鲁棒的聚类算法,该算法不仅旨在对数据进行聚类,而且旨在识别异常值。新颖的方法依赖于数据中异常值的很少出现,这转化为明智选择的域中的稀疏性。利用离群域中的稀疏性,提出了离群感知的鲁棒K均值和概率聚类方法。他们的新颖之处在于,通过精心选择的正则化方法,可以在确定异常值的同时,在异常值域中实现稀疏性。开发了块坐标下降法来获得迭代算法,该迭代算法相对于其非鲁棒对应物具有收敛保证和较小的额外计算复杂性。还开发了鲁棒性聚类算法的内核版本,以有效处理高维数据,识别非线性可分离的聚类,甚至没有由矢量表示的聚类对象。在合成数据集和真实数据集上的数值测试均验证了新型算法的性能和适用性。

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