Weighted Sparse Subspace Representation: A Unified Framework for Subspace Clustering, Constrained Clustering, and Active Learning
Spectral-based subspace clustering methods have proved successful in many challenging applications such as gene sequencing, image recognition, and motion segmentation. In this work, we first propose a novel spectral-based subspace clustering algorithm that seeks to represent each point as a sparse c...
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creator | Peng, Hankui Pavlidis, Nicos G |
description | Spectral-based subspace clustering methods have proved successful in many
challenging applications such as gene sequencing, image recognition, and motion
segmentation. In this work, we first propose a novel spectral-based subspace
clustering algorithm that seeks to represent each point as a sparse convex
combination of a few nearby points. We then extend the algorithm to constrained
clustering and active learning settings. Our motivation for developing such a
framework stems from the fact that typically either a small amount of labelled
data is available in advance; or it is possible to label some points at a cost.
The latter scenario is typically encountered in the process of validating a
cluster assignment. Extensive experiments on simulated and real data sets show
that the proposed approach is effective and competitive with state-of-the-art
methods. |
doi_str_mv | 10.48550/arxiv.2106.04330 |
format | Article |
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challenging applications such as gene sequencing, image recognition, and motion
segmentation. In this work, we first propose a novel spectral-based subspace
clustering algorithm that seeks to represent each point as a sparse convex
combination of a few nearby points. We then extend the algorithm to constrained
clustering and active learning settings. Our motivation for developing such a
framework stems from the fact that typically either a small amount of labelled
data is available in advance; or it is possible to label some points at a cost.
The latter scenario is typically encountered in the process of validating a
cluster assignment. Extensive experiments on simulated and real data sets show
that the proposed approach is effective and competitive with state-of-the-art
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challenging applications such as gene sequencing, image recognition, and motion
segmentation. In this work, we first propose a novel spectral-based subspace
clustering algorithm that seeks to represent each point as a sparse convex
combination of a few nearby points. We then extend the algorithm to constrained
clustering and active learning settings. Our motivation for developing such a
framework stems from the fact that typically either a small amount of labelled
data is available in advance; or it is possible to label some points at a cost.
The latter scenario is typically encountered in the process of validating a
cluster assignment. Extensive experiments on simulated and real data sets show
that the proposed approach is effective and competitive with state-of-the-art
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challenging applications such as gene sequencing, image recognition, and motion
segmentation. In this work, we first propose a novel spectral-based subspace
clustering algorithm that seeks to represent each point as a sparse convex
combination of a few nearby points. We then extend the algorithm to constrained
clustering and active learning settings. Our motivation for developing such a
framework stems from the fact that typically either a small amount of labelled
data is available in advance; or it is possible to label some points at a cost.
The latter scenario is typically encountered in the process of validating a
cluster assignment. Extensive experiments on simulated and real data sets show
that the proposed approach is effective and competitive with state-of-the-art
methods.</abstract><doi>10.48550/arxiv.2106.04330</doi><oa>free_for_read</oa></addata></record> |
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subjects | Computer Science - Learning Statistics - Machine Learning |
title | Weighted Sparse Subspace Representation: A Unified Framework for Subspace Clustering, Constrained Clustering, and Active Learning |
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