Data matrix

Results: 1829



#Item
21Implementing Randomized Matrix Algorithms in Parallel and Distributed Environments Michael W. Mahoney Stanford University ( For more info, see: http:// cs.stanford.edu/people/mmahoney/

Implementing Randomized Matrix Algorithms in Parallel and Distributed Environments Michael W. Mahoney Stanford University ( For more info, see: http:// cs.stanford.edu/people/mmahoney/

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Source URL: mmds-data.org

- Date: 2016-03-09 01:30:00
    22DATA COMPRESSION AND CRITICAL POINTS DETECTION USING NORMALIZED SYMMETRIC SCATTERED MATRIX Khagendra Thapa B.Sc. B.Sc(Hons) CNAA, M.Sc.E. M.S. Ph.D. Department of Surveying and MappingFenis State University Big Rapids, M

    DATA COMPRESSION AND CRITICAL POINTS DETECTION USING NORMALIZED SYMMETRIC SCATTERED MATRIX Khagendra Thapa B.Sc. B.Sc(Hons) CNAA, M.Sc.E. M.S. Ph.D. Department of Surveying and MappingFenis State University Big Rapids, M

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    Source URL: mapcontext.com

    - Date: 2008-08-30 00:42:23
      23Computing Fundamentals Salvatore Filippone  2013–2014

      Computing Fundamentals Salvatore Filippone 2013–2014

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      Source URL: people.uniroma2.it

      Language: English - Date: 2014-09-23 08:13:16
      24Recommendation engines have a number of different applications. From books to movies, they enable the analysis and prediction of consumer preferences. The prevalence of recommender systems in both the business and comput

      Recommendation engines have a number of different applications. From books to movies, they enable the analysis and prediction of consumer preferences. The prevalence of recommender systems in both the business and comput

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      Source URL: mmds-data.org

      Language: English - Date: 2016-06-23 15:50:48
      25Leverage scores Petros Drineas Rensselaer Polytechnic Institute Computer Science Department  To access my web page:

      Leverage scores Petros Drineas Rensselaer Polytechnic Institute Computer Science Department To access my web page:

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      Source URL: mmds-data.org

      Language: English - Date: 2016-03-09 01:29:55
      26Building a Successful Scalable Parallel Numerical Library: Lessons From the PETSc Library William D. Gropp  www.cs.uiuc.edu/homes/wgropp

      Building a Successful Scalable Parallel Numerical Library: Lessons From the PETSc Library William D. Gropp www.cs.uiuc.edu/homes/wgropp

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      Source URL: wgropp.cs.illinois.edu

      Language: English - Date: 2016-08-16 11:52:11
      27Mining Data that Changes 17 July 2015 Data is Not Static •

      Mining Data that Changes 17 July 2015 Data is Not Static •

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      Source URL: people.mmci.uni-saarland.de

      Language: English - Date: 2015-07-23 04:33:45
      28Correlation structure of spiky financial data: the case of congestion in Day-Ahead Energy Markets F. Caravelli1, 2, 3 1  Invenia Labs, 27 Parkside Place, Parkside, Cambridge CB1 1HQ, UK

      Correlation structure of spiky financial data: the case of congestion in Day-Ahead Energy Markets F. Caravelli1, 2, 3 1 Invenia Labs, 27 Parkside Place, Parkside, Cambridge CB1 1HQ, UK

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      Source URL: invenia.ca

      Language: English - Date: 2015-12-11 10:59:39
      29Glyphs in Matrix Representation of Graphs for Displaying Soccer Games Results Ricardo Cava and Carla Dal Sasso Freitas Abstract—Soccer is a popular game in many countries. Aiming at showing information about soccer tea

      Glyphs in Matrix Representation of Graphs for Displaying Soccer Games Results Ricardo Cava and Carla Dal Sasso Freitas Abstract—Soccer is a popular game in many countries. Aiming at showing information about soccer tea

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      Source URL: workshop.sportvis.com

      Language: English - Date: 2015-11-09 23:45:53
      30A combination of convex programs developed by Chan- drasekaran, Parillo and Wilskyand Saunderson et alcan be used to extract financial risk factors from a sample return covariance matrix. I will examine

      A combination of convex programs developed by Chan- drasekaran, Parillo and Wilskyand Saunderson et alcan be used to extract financial risk factors from a sample return covariance matrix. I will examine

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      Source URL: mmds-data.org

      - Date: 2016-06-23 15:50:48