Learning theory

Results: 7211



#Item
41Introduction to Statistical Learning Theory Olivier Bousquet1 , St´ephane Boucheron2 , and G´abor Lugosi3 1 Max-Planck Institute for Biological Cybernetics Spemannstr. 38, DT¨

Introduction to Statistical Learning Theory Olivier Bousquet1 , St´ephane Boucheron2 , and G´abor Lugosi3 1 Max-Planck Institute for Biological Cybernetics Spemannstr. 38, DT¨

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Source URL: 84.89.132.1

- Date: 2004-07-08 09:05:04
    42JMLR: Workshop and Conference Proceedings vol–25th Annual Conference on Learning Theory Towards Minimax Policies for Online Linear Optimization with Bandit Feedback

    JMLR: Workshop and Conference Proceedings vol–25th Annual Conference on Learning Theory Towards Minimax Policies for Online Linear Optimization with Bandit Feedback

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    Source URL: www.jmlr.org

    - Date: 2012-06-17 06:50:54
      43for singer/songwriters at an institution of higher learning. In anticipation of this, I have already started teaching such courses as song writing, contemporary music theory, and music technology (my musical alter ego is

      for singer/songwriters at an institution of higher learning. In anticipation of this, I have already started teaching such courses as song writing, contemporary music theory, and music technology (my musical alter ego is

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      Source URL: asianetwork.org

      - Date: 2014-10-30 11:11:03
        44JMLR: Workshop and Conference Proceedings vol–25th Annual Conference on Learning Theory Reconstruction from Anisotropic Random Measurements Mark Rudelson

        JMLR: Workshop and Conference Proceedings vol–25th Annual Conference on Learning Theory Reconstruction from Anisotropic Random Measurements Mark Rudelson

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        Source URL: jmlr.csail.mit.edu

        - Date: 2012-06-17 06:51:00
          45Learning Theory and Algorithms for Forecasting Non-Stationary Time Series Vitaly Kuznetsov Courant Institute New York, NY 10011

          Learning Theory and Algorithms for Forecasting Non-Stationary Time Series Vitaly Kuznetsov Courant Institute New York, NY 10011

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          Source URL: www.cs.nyu.edu

          - Date: 2016-03-08 14:28:44
            46On-the-Job Learning with Bayesian Decision Theory  Keenon Werling Department of Computer Science Stanford University

            On-the-Job Learning with Bayesian Decision Theory Keenon Werling Department of Computer Science Stanford University

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            Source URL: papers.nips.cc

            - Date: 2015-12-18 17:40:30
              47Introducing Propositional Logic and Queueing Theory with the InfoTraffic Interactive Learning Environments Ruedi Arnold Institute for Pervasive Computing ETH Zurich 8092 Zurich, Switzerland

              Introducing Propositional Logic and Queueing Theory with the InfoTraffic Interactive Learning Environments Ruedi Arnold Institute for Pervasive Computing ETH Zurich 8092 Zurich, Switzerland

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              Source URL: ruedi-arnold.com

              - Date: 2011-12-23 03:25:45
                48CONVERSATION, COGNITION AND LEARNING A Cybernetic Theory and Methodology GORDON PASK

                CONVERSATION, COGNITION AND LEARNING A Cybernetic Theory and Methodology GORDON PASK

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                Source URL: tocs.ulb.tu-darmstadt.de

                - Date: 2008-02-14 17:36:49
                  498 Behavioural Game Theory: Thinking, Learning and Teaching∗ Colin F. Camerer,1 Teck-Hua Ho and Juin Kuan Chong  Introduction

                  8 Behavioural Game Theory: Thinking, Learning and Teaching∗ Colin F. Camerer,1 Teck-Hua Ho and Juin Kuan Chong Introduction

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                  Source URL: people.hss.caltech.edu

                  - Date: 2004-07-19 12:47:30
                    50Batch-Incremental vs. Instance-Incremental Learning in Dynamic and Evolving Data Jesse Read1 , Albert Bifet2 , Bernhard Pfahringer2 , Geoff Holmes2 1 Department  of Signal Theory and Communications

                    Batch-Incremental vs. Instance-Incremental Learning in Dynamic and Evolving Data Jesse Read1 , Albert Bifet2 , Bernhard Pfahringer2 , Geoff Holmes2 1 Department of Signal Theory and Communications

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                    Source URL: jmread.github.io

                    - Date: 2016-05-18 09:25:59