Hierarchical matrix

Results: 54



#Item
1Non-negative Matrix Factorization for Discrete Data with Hierarchical Side-Information Changwei Hu1 Piyush Rai12 Lawrence Carin1

Non-negative Matrix Factorization for Discrete Data with Hierarchical Side-Information Changwei Hu1 Piyush Rai12 Lawrence Carin1

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Source URL: www.cse.iitk.ac.in

- Date: 2016-04-10 07:53:19
    2Use of Semi-separable Approximate Factorization and Direction-preserving for Constructing Effective Preconditioners X. Sherry Li Lawrence Berkeley National Laboratory Ming Gu (UC Berkeley)

    Use of Semi-separable Approximate Factorization and Direction-preserving for Constructing Effective Preconditioners X. Sherry Li Lawrence Berkeley National Laboratory Ming Gu (UC Berkeley)

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    Source URL: crd-legacy.lbl.gov

    Language: English - Date: 2010-03-18 15:12:23
    3Diagnostic cluster analysis of mathematics skills Yoon Soo Park and Young-Sun Lee Teachers College, Columbia University, New York, USA Clustering and similarity trees are effective techniques for grouping and visualizing

    Diagnostic cluster analysis of mathematics skills Yoon Soo Park and Young-Sun Lee Teachers College, Columbia University, New York, USA Clustering and similarity trees are effective techniques for grouping and visualizing

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    Source URL: ierinstitute.org

    Language: English - Date: 2012-01-04 07:01:18
    4SoF: Soft-Cluster Matrix Factorization for Probabilistic Clustering Han Zhao† , Pascal Poupart† , Yongfeng Zhang§ and Martin Lysy‡ † David R. Cheriton School of Computer Science, University of Waterloo, Canada D

    SoF: Soft-Cluster Matrix Factorization for Probabilistic Clustering Han Zhao† , Pascal Poupart† , Yongfeng Zhang§ and Martin Lysy‡ † David R. Cheriton School of Computer Science, University of Waterloo, Canada D

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    Source URL: yongfeng.me

    Language: English - Date: 2015-03-02 08:17:50
    5Towards an Optimal-Order Approximate Sparse Factorization Exploiting Data-Sparseness in Separators X. Sherry Li, Lawrence Berkeley National Laboratory Artem Napov, Université Libre de Bruxelles Francois-Henry Rouet, Law

    Towards an Optimal-Order Approximate Sparse Factorization Exploiting Data-Sparseness in Separators X. Sherry Li, Lawrence Berkeley National Laboratory Artem Napov, Université Libre de Bruxelles Francois-Henry Rouet, Law

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    Source URL: crd-legacy.lbl.gov

    Language: English - Date: 2013-08-15 10:09:59
    6Details of our Motif Clustering Procedure 1 Bayesian Hierarchical Clustering Model The data for each discovered motif is a count matrix Ni which can have different widths and number of counts compared to other TF motifs.

    Details of our Motif Clustering Procedure 1 Bayesian Hierarchical Clustering Model The data for each discovered motif is a count matrix Ni which can have different widths and number of counts compared to other TF motifs.

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    Source URL: www-stat.wharton.upenn.edu

    Language: English - Date: 2005-07-21 15:44:40
    7Solving Hierarchical Diffusion Equation Using Some Matrix Algebra A. Radyna Mechanical and Mathematical Faculty, Belarusian State University 4 Skaryna ave., Minsk, Belarus e-mail : ales.radyna gmail.com k−1

    Solving Hierarchical Diffusion Equation Using Some Matrix Algebra A. Radyna Mechanical and Mathematical Faculty, Belarusian State University 4 Skaryna ave., Minsk, Belarus e-mail : ales.radyna gmail.com k−1

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    Source URL: p-adics2015.matf.bg.ac.rs

    Language: English - Date: 2015-07-29 07:06:39
      8LEARNING TO SEGMENT SONGS WITH ORDINAL LINEAR DISCRIMINANT ANALYSIS Brian McFee Daniel P.W. Ellis  Center for Jazz Studies

      LEARNING TO SEGMENT SONGS WITH ORDINAL LINEAR DISCRIMINANT ANALYSIS Brian McFee Daniel P.W. Ellis Center for Jazz Studies

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      Source URL: bmcfee.github.io

      Language: English - Date: 2016-05-31 12:44:38
      9Proceedings, The Eleventh AAAI Conference on Artificial Intelligence and Interactive Digital Entertainment (AIIDE-15)  Bayesian Clustering of Player Styles for Multiplayer Games Aline Normoyle  Shane T. Jensen

      Proceedings, The Eleventh AAAI Conference on Artificial Intelligence and Interactive Digital Entertainment (AIIDE-15) Bayesian Clustering of Player Styles for Multiplayer Games Aline Normoyle Shane T. Jensen

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      Source URL: www-stat.wharton.upenn.edu

      Language: English - Date: 2015-12-17 10:15:17
      10Research Paper  The reflection of hierarchical cluster analysis of co-occurrence matrices in SPSS Qiuju ZHOU1, Fuhai LENG1† & Loet LEYDESDORFF2 National Science Library, Chinese Academy of Sciences, Beijing, Chi

      Research Paper The reflection of hierarchical cluster analysis of co-occurrence matrices in SPSS Qiuju ZHOU1, Fuhai LENG1† & Loet LEYDESDORFF2 National Science Library, Chinese Academy of Sciences, Beijing, Chi

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      Source URL: 159.226.100.150

      Language: English - Date: 2015-08-18 06:47:22