Deep inference

Results: 52



#Item
112015 IEEE Intelligent Vehicles Symposium (IV) June 28 - July 1, 2015. COEX, Seoul, Korea Pedestrian Detection Based on Deep Convolutional Neural Network with Ensemble Inference Network Hiroshi Fukui

2015 IEEE Intelligent Vehicles Symposium (IV) June 28 - July 1, 2015. COEX, Seoul, Korea Pedestrian Detection Based on Deep Convolutional Neural Network with Ensemble Inference Network Hiroshi Fukui

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Source URL: www.murase.m.is.nagoya-u.ac.jp

- Date: 2015-07-03 08:04:45
    12From Deep Inference to Proof Nets via Cut Elimination Lutz Straßburger INRIA Saclay–ˆIle-de-France, France http://www.lix.polytechnique.fr/∼ lutz June 24, 2009

    From Deep Inference to Proof Nets via Cut Elimination Lutz Straßburger INRIA Saclay–ˆIle-de-France, France http://www.lix.polytechnique.fr/∼ lutz June 24, 2009

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    Source URL: www.lix.polytechnique.fr

    Language: English - Date: 2009-06-25 08:22:18
    13Big DataConference Program Monday, August 22 9:00-9:50am Yiling Chen, Harvard University Title: “Machine Learning with Strategic Data Sources”

    Big DataConference Program Monday, August 22 9:00-9:50am Yiling Chen, Harvard University Title: “Machine Learning with Strategic Data Sources”

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    Source URL: cmsa.fas.harvard.edu

    Language: English - Date: 2016-08-03 13:09:29
    14Learning Natural Language Inference with LSTM Shuohang Wang School of Information Systems Singapore Management University

    Learning Natural Language Inference with LSTM Shuohang Wang School of Information Systems Singapore Management University

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    Source URL: arxiv.org

    Language: English - Date: 2015-12-30 20:26:50
    15Sensing Urban Space: from Street View Recognition, Event Inference to Understand Urban Behavior Fan Zhang1, Hui Lin12*, 1The Chinese University of Hong Kong, Shatin, New Territories, Hong Kong 2The Chinese University of

    Sensing Urban Space: from Street View Recognition, Event Inference to Understand Urban Behavior Fan Zhang1, Hui Lin12*, 1The Chinese University of Hong Kong, Shatin, New Territories, Hong Kong 2The Chinese University of

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    Source URL: ncgia.buffalo.edu

    Language: English - Date: 2016-05-18 12:38:26
    16Microsoft Word - MSc in Applied Statisticsoutline.docx

    Microsoft Word - MSc in Applied Statisticsoutline.docx

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    Source URL: www.stats.ox.ac.uk

    Language: English - Date: 2016-02-12 07:15:48
    17Deep Learning and Structural Kernels for Semantic Inference: Question Answering Applications to Formal Text and Web Forums

    Deep Learning and Structural Kernels for Semantic Inference: Question Answering Applications to Formal Text and Web Forums

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    Source URL: www.dialog-21.ru

    Language: English - Date: 2016-05-25 06:25:56
    18Some considerations on the complexity of deep inference based on joint works with Alessio Guglielmi, Tom Gundersen, Michel Parigot  Paola Bruscoli

    Some considerations on the complexity of deep inference based on joint works with Alessio Guglielmi, Tom Gundersen, Michel Parigot Paola Bruscoli

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    Source URL: www.cs.bath.ac.uk

    Language: English - Date: 2015-12-13 19:41:56
      19On the Proof Complexity of Cut-Free Bounded Deep Inference Anupam Das University of Bath  Abstract. It has recently been shown that cut-free deep inference systems exhibit an exponential speed-up over cut-free sequent sy

      On the Proof Complexity of Cut-Free Bounded Deep Inference Anupam Das University of Bath Abstract. It has recently been shown that cut-free deep inference systems exhibit an exponential speed-up over cut-free sequent sy

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      Source URL: www.anupamdas.com

      Language: English - Date: 2012-02-03 19:34:56
        20THE SIZE OF LINEAR DERIVATIONS IN DEEP INFERENCE ANUPAM DAS Abstract. In unit-free deep inference it is known that derivations comprising of just the logical rules (switch and medial) are polynomial in size. When units a

        THE SIZE OF LINEAR DERIVATIONS IN DEEP INFERENCE ANUPAM DAS Abstract. In unit-free deep inference it is known that derivations comprising of just the logical rules (switch and medial) are polynomial in size. When units a

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        Source URL: www.anupamdas.com

        Language: English - Date: 2012-09-26 12:39:03