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Scalable Deep k-Subspace Clustering

机译:可扩展的深k子空间聚类

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Subspace clustering algorithms are notorious for their scalability issues because building and processing large affinity matrices are demanding. In this paper, we introduce a method that, simultaneously learns an embedding space along subspaces within it to minimize a notion of reconstruction error, thus addressing the problem of subspace clustering in an end-to-end learning paradigm. To achieve our goal, we propose a scheme to update subspaces within a deep neural network. This in turn frees us from the need of having an affinity matrix to perform clustering. Unlike previous attempts, our method can easily scale up to large datasets, making it unique in the context of unsupervised learning with deep architectures. Our experiments show that our method significantly improves the clustering accuracy while enjoying cheaper memory footprints.
机译:子空间聚类算法因其可伸缩性问题而臭名昭著,因为需要构建和处理大型亲和力矩阵。在本文中,我们介绍了一种方法,该方法可同时沿子空间学习嵌入空间以最小化重构误差的概念,从而解决了端到端学习范式中子空间聚类的问题。为了实现我们的目标,我们提出了一种在深度神经网络中更新子空间的方案。反过来,这使我们无需具有亲和力矩阵即可执行聚类。与以前的尝试不同,我们的方法可以轻松地扩展到大型数据集,使其在使用深度架构的无监督学习的情况下具有独特性。我们的实验表明,我们的方法显着提高了聚类精度,同时享有更便宜的内存占用。

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