Cascade Subspace Clustering

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Cascade Subspace Clustering
Title:
Cascade Subspace Clustering
Journal Title:
Association for the Advancement of Artificial Intelligence
DOI:
Keywords:
Publication Date:
04 February 2017
Citation:
Abstract:
In this paper, we recast the subspace clustering as a verification problem. Our idea comes from an assumption that the distribution between a given sample x and cluster centers Omega is invariant to different distance metrics on the manifold, where each distribution is defined as a probability map (i.e. soft-assignment) between x and Omega. To verify this so-called invariance of distribution, we propose a deep learning based subspace clustering method which simultaneously learns a compact representation using a neural network and a clustering assignment by minimizing the discrepancy between pair-wise sample-centers distributions. To the best of our knowledge, this is the first work to reformulate clustering as a verification problem. Moreover, the proposed method is also one of the first several cascade clustering models which jointly learn representation and clustering in end-to-end manner. Extensive experimental results show the effectiveness of our algorithm comparing with 11 state-of-the-art clustering approaches on four data sets regarding to four evaluation metrics.
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PublisherCopyrights
Funding Info:
A*STAR Industrial Robotics Programme - Distributed Sensing and Perception under SERC grant 1225100002.
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Full paper can be downloaded from the Publisher's URL provided.
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