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Robust Subspace Segmentation with Block-diagonal Prior

by Jiashi Feng, Zhouchen Lin, Huan Xu, Shuicheng Yan
"... The subspace segmentation problem is addressed in this paper by effectively constructing an exactly block-diagonal sample affinity matrix. The block-diagonal structure is heavily desired for accurate sample clustering but is rather difficult to obtain. Most current state-of-the-art subspace segmenta ..."
Abstract - Cited by 2 (0 self) - Add to MetaCart
The subspace segmentation problem is addressed in this paper by effectively constructing an exactly block-diagonal sample affinity matrix. The block-diagonal structure is heavily desired for accurate sample clustering but is rather difficult to obtain. Most current state-of-the-art subspace

Automatic Subspace Clustering of High Dimensional Data

by Rakesh Agrawal, Johannes Gehrke, Dimitrios Gunopulos, Prabhakar Raghavan - Data Mining and Knowledge Discovery , 2005
"... Data mining applications place special requirements on clustering algorithms including: the ability to find clusters embedded in subspaces of high dimensional data, scalability, end-user comprehensibility of the results, non-presumption of any canonical data distribution, and insensitivity to the or ..."
Abstract - Cited by 724 (12 self) - Add to MetaCart
to the order of input records. We present CLIQUE, a clustering algorithm that satisfies each of these requirements. CLIQUE identifies dense clusters in subspaces of maximum dimensionality. It generates cluster descriptions in the form of DNF expressions that are minimized for ease of comprehension. It produces

BIRCH: an efficient data clustering method for very large databases

by Tian Zhang, Raghu Ramakrishnan, Miron Livny - In Proc. of the ACM SIGMOD Intl. Conference on Management of Data (SIGMOD , 1996
"... Finding useful patterns in large datasets has attracted considerable interest recently, and one of the most widely st,udied problems in this area is the identification of clusters, or deusel y populated regions, in a multi-dir nensional clataset. Prior work does not adequately address the problem of ..."
Abstract - Cited by 576 (2 self) - Add to MetaCart
Finding useful patterns in large datasets has attracted considerable interest recently, and one of the most widely st,udied problems in this area is the identification of clusters, or deusel y populated regions, in a multi-dir nensional clataset. Prior work does not adequately address the problem

Membership Representation for Detecting Block-diagonal Structure in Low-rank or Sparse Subspace Clustering

by Minsik Lee, Jieun Lee, Hyeogjin Lee, Nojun Kwak
"... Recently, there have been many proposals with state-of-the-art results in subspace clustering that take advan-tages of the low-rank or sparse optimization techniques. These methods are based on self-expressive models, which have well-defined theoretical aspects. They produce ma-trices with (approxim ..."
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an alternative approach to detect block-diagonal structures from these matrices. The pro-posed method shares the philosophy of the above subspace clustering methods, in that it is a self-expressive system based on a Hadamard product of a membership matrix. To resolve the difficulty in handling the membership ma

A Block-Diagonal Structured Model Reduction Scheme for Power Grid Networks

by Zheng Zhang, Xiang Hu, Chung-kuan Cheng, Ngai Wong
"... Abstract—We propose a block-diagonal structured model or-der reduction (BDSM) scheme for fast power grid analysis. Compared with existing power grid model order reduction (MOR) methods, BDSM has several advantages. First, unlike many power grid reductions that are based on terminal reduction and thu ..."
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Abstract—We propose a block-diagonal structured model or-der reduction (BDSM) scheme for fast power grid analysis. Compared with existing power grid model order reduction (MOR) methods, BDSM has several advantages. First, unlike many power grid reductions that are based on terminal reduction

Finding Generalized Projected Clusters in High Dimensional Spaces

by Charu C. Aggarwal, et al.
"... High dimensional data has always been a challenge for clustering algorithms because of the inherent sparsity of the points. Recent research results indicate that in high dimensional data, even the concept of proximity or clustering may not be meaningful. We discuss very general techniques for projec ..."
Abstract - Cited by 194 (8 self) - Add to MetaCart
for projected clustering which are able to construct clusters in arbitrarily aligned subspaces of lower dimensionality. The subspaces are specific to the clusters themselves. This definition is substantially more general and realistic than currently available techniques which limit the method to only

Multilinear Subspace Analysis of Image Ensembles

by M. Alex O. Vasilescu, Demetri Terzopoulos - PROCEEDINGS OF 2003 IEEE COMPUTER SOCIETY CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION , 2003
"... Multilinear algebra, the algebra of higher-order tensors, offers a potent mathematical framework for analyzing ensembles of images resulting from the interaction of any number of underlying factors. We present a dimensionality reduction algorithm that enables subspace analysis within the multilinear ..."
Abstract - Cited by 119 (2 self) - Add to MetaCart
Multilinear algebra, the algebra of higher-order tensors, offers a potent mathematical framework for analyzing ensembles of images resulting from the interaction of any number of underlying factors. We present a dimensionality reduction algorithm that enables subspace analysis within

Subspace Clustering

by Bryan Poling, Gilad Lerman
"... Abstract We present a new approach to rigid-body mo-tion segmentation from two views. We use a previously de-veloped nonlinear embedding of two-view point correspon-dences into a 9-dimensional space and identify the differ-ent motions by segmenting lower-dimensional subspaces. In order to overcome n ..."
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Abstract We present a new approach to rigid-body mo-tion segmentation from two views. We use a previously de-veloped nonlinear embedding of two-view point correspon-dences into a 9-dimensional space and identify the differ-ent motions by segmenting lower-dimensional subspaces. In order to overcome

Subspace Communication

by Josep Font-segura, Prof Gregori , 2014
"... We are surrounded by electronic devices that take advantage of wireless technologies, from our computer mice, which require little amounts of information, to our cellphones, which demand increasingly higher data rates. Until today, the coexistence of such a variety of services has been guaranteed by ..."
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We are surrounded by electronic devices that take advantage of wireless technologies, from our computer mice, which require little amounts of information, to our cellphones, which demand increasingly higher data rates. Until today, the coexistence of such a variety of services has been guaranteed by a fixed assignment of spectrum resources by regulatory agencies. This has resulted into a blind alley, as current wireless spectrum has become an expensive and a scarce resource. However, recent measurements in dense areas paint a very different picture: there is an actual underutilization of the spectrum by legacy sys-tems. Cognitive radio exhibits a tremendous promise for increasing the spectral efficiency for future wireless systems. Ideally, new secondary users would have a perfect panorama of the spectrum usage, and would opportunistically communicate over the available re-sources without degrading the primary systems. Yet in practice, monitoring the spectrum resources, detecting available resources for opportunistic communication, and transmit-ting over the resources are hard tasks. This thesis addresses the tasks of monitoring, de-

Clustering by Ordering Density-Based Subspaces

by Kan Liu, Dongru Zhou, Xiaozheng Zhou
"... Abstract. Finding clusters on the basis of density distribution is a traditional approach to discover clusters with arbitrary shape. Some density-based clustering algorithms such as DBSCAN, OPTICS, DENCLUE, and CLIQUE etc have been explored in recent researches. This paper presents a new approach wh ..."
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which is based on the ordered subspace to find clusters. The key idea is to sort the subspaces according to their density, and set a new cluster for the maximal subspace of the subspace list. Since the number of the subspaces is much less than that of the data, very large databases with high
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