SVM

Results: 374



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41SVM NLA-Final - print_rankinglist.php

SVM NLA-Final - print_rankinglist.php

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Source URL: www.swiss-athletics.ch

Language: German - Date: 2016-05-23 03:38:25
    42Incorporating the Boltzmann Prior in Object Detection Using SVM Margarita Osadchy and Daniel Keren Computer Science Department University of Haifa Mount Carmel, Haifa 31905, Israel (rita,dkeren)@cs.haifa.ac.il

    Incorporating the Boltzmann Prior in Object Detection Using SVM Margarita Osadchy and Daniel Keren Computer Science Department University of Haifa Mount Carmel, Haifa 31905, Israel (rita,dkeren)@cs.haifa.ac.il

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    Source URL: rita.osadchy.net

    Language: English - Date: 2011-07-02 09:59:31
      43Working Set Selection Using Second Order Information for Training SVM Chih-Jen Lin Department of Computer Science National Taiwan University

      Working Set Selection Using Second Order Information for Training SVM Chih-Jen Lin Department of Computer Science National Taiwan University

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      Source URL: www.csie.ntu.edu.tw

      Language: English - Date: 2005-12-24 03:13:38
        44Schweizer Vereinsmeisterschaft für Leichtathletik (SVM) Reglement 2016

        Schweizer Vereinsmeisterschaft für Leichtathletik (SVM) Reglement 2016

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        Source URL: swiss-athletics.ch

        Language: German - Date: 2016-05-06 02:48:01
          45Extension of the  -SVM Range for Classication y z  z

          Extension of the  -SVM Range for Classi cation y z z

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          Source URL: www.tsc.uc3m.es

          Language: English - Date: 2002-12-02 05:11:04
            46A Study on L2-Loss (Squared Hinge-Loss) Multi-Class SVM Ching-Pei Lee and Chih-Jen Lin Department of Computer Science, National Taiwan University, Taipei 10617, Taiwan Keywords: Support vector machines, Multi-class class

            A Study on L2-Loss (Squared Hinge-Loss) Multi-Class SVM Ching-Pei Lee and Chih-Jen Lin Department of Computer Science, National Taiwan University, Taipei 10617, Taiwan Keywords: Support vector machines, Multi-class class

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            Source URL: www.csie.ntu.edu.tw

            Language: English - Date: 2012-11-27 09:36:08
              47Person Re-identification based on Human query on Soft Biometrics using SVM regression Athira Nambiar1 , Alexandre Bernardino1 and Jacinto C. Nascimento1 1 Institute  for Systems and Robotics, Instituto Superior T´ecnico

              Person Re-identification based on Human query on Soft Biometrics using SVM regression Athira Nambiar1 , Alexandre Bernardino1 and Jacinto C. Nascimento1 1 Institute for Systems and Robotics, Instituto Superior T´ecnico

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              Source URL: vislab.isr.ist.utl.pt

              Language: English - Date: 2016-03-04 12:58:42
                48IMPROVED SVM SPEAKER VERIFICATION THROUGH DATA-DRIVEN BACKGROUND DATASET SELECTION Mitchell McLaren, Brendan Baker, Robbie Vogt, Sridha Sridharan Speech and Audio Research Laboratory, Queensland University of Technology,

                IMPROVED SVM SPEAKER VERIFICATION THROUGH DATA-DRIVEN BACKGROUND DATASET SELECTION Mitchell McLaren, Brendan Baker, Robbie Vogt, Sridha Sridharan Speech and Audio Research Laboratory, Queensland University of Technology,

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                Source URL: mistral.univ-avignon.fr

                Language: English
                  49CRF versus SVM-Struct for Sequence Labeling   S. Sathiya Keerthi Yahoo! Research, Santa Clara, USA

                  CRF versus SVM-Struct for Sequence Labeling S. Sathiya Keerthi Yahoo! Research, Santa Clara, USA

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                  Source URL: www.keerthis.com

                  Language: English - Date: 2007-10-17 18:51:56
                    50An Efficient Method for Gradient-Based Adaptation of Hyperparameters in SVM Models S. Sathiya Keerthi Yahoo! Research Media Studios North

                    An Efficient Method for Gradient-Based Adaptation of Hyperparameters in SVM Models S. Sathiya Keerthi Yahoo! Research Media Studios North

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                    Source URL: www.keerthis.com

                    Language: English - Date: 2008-05-17 11:07:13