Search Results - [INFO.INFO-TT] Computer Science [cs]/Document and Text Processing

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  1. 1

    Sentiment analysis on social media for stock movement prediction by Nguyen, Thien Hai, Shirai, Kiyoaki, Velcin, Julien

    ISSN: 0957-4174, 1873-6793
    Published: Elsevier Ltd 30.12.2015
    Published in Expert systems with applications (30.12.2015)
    “…•A novel method for predicting stock price movement was presented.•Topics and sentiments of them were extracted from social media as the feature.•Two methods…”
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    Journal Article
  2. 2

    Universal Dependencies for Mandarin Chinese by Rafaël Poiret, Tak-Sum Wong, John Lee, Kim Gerdes, Herman Leung

    ISSN: 1574-020X, 1574-0218
    Published: Springer Science and Business Media LLC 24.11.2021
    Published in Language Resources and Evaluation (24.11.2021)
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    Journal Article
  3. 3

    Preparing Big Manuscript Data for Hierarchical Clustering with Minimal HTR Training by Perdiki, Elpida

    ISSN: 2416-5999, 2416-5999
    Published: INRIA 20.12.2023
    “…HTR (Handwritten Text Recognition) technologies have progressed enough to offer high-accuracy results in recognising handwritten documents, even on a synchronous level…”
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    Journal Article
  4. 4

    Automatic medieval charters structure detection : A Bi-LSTM linear segmentation approach by Torres Aguilar, Sergio, Chastang, Pierre, Tannier, Xavier

    ISSN: 2416-5999, 2416-5999
    Published: INRIA 30.10.2022
    “…, rarely structured sources. Our model is based on a Bi-LSTM approach using a final CRF-layer and was trained using a large, annotated collection of medieval charters (4,700 documents…”
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    Journal Article
  5. 5

    Leveraging Concepts in Open Access Publications by Andrea Bertino, Luca Foppiano, Laurent Romary, Pierre Mounier

    ISSN: 2416-5999, 2416-5999
    Published: Nicolas Turenne 01.06.2020
    “…This paper addresses the integration of a Named Entity Recognition and Disambiguation (NERD) service within a group of open access (OA) publishing digital…”
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    Journal Article
  6. 6

    Leveraging Concepts in Open Access Publications by Bertino, Andrea, Foppiano, Luca, Romary, Laurent, Mounier, Pierre

    ISSN: 2416-5999, 2416-5999
    Published: INRIA 15.06.2020
    “…This paper addresses the integration of a Named Entity Recognition and Disambiguation (NERD) service within a group of open access (OA) publishing digital…”
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    Journal Article
  7. 7
  8. 8

    Intertextual Pointers in the Text Alignment Network by Joel Kalvesmaki

    ISSN: 2416-5999, 2416-5999
    Published: Nicolas Turenne 01.10.2017
    “…The Text Alignment Network (TAN) is a suite of XML encoding formats intended to serve anyone who wishes to encode, exchange, and study multiple versions of texts (e.g…”
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    Journal Article
  9. 9

    Intertextual Pointers in the Text Alignment Network by Kalvesmaki, Joel

    ISSN: 2416-5999, 2416-5999
    Published: INRIA 27.10.2017
    “…The Text Alignment Network (TAN) is a suite of XML encoding formats intended to serve anyone who wishes to encode, exchange, and study multiple versions of texts (e.g…”
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    Journal Article
  10. 10
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    HistoInformatics2021: The 6th International Workshop on Computational History by Sumikawa, Yasunobu, Ikejiri, Ryohei, Doucet, Antoine, Pfanzelter, Eva, Hasanuzzaman, Mohammed, Dias, Gael, Milligan, Ian, Jatowt, Adam

    Published: IEEE 01.09.2021
    “…) held in conjunction with the JCDL2021 conference. This is the 6th installment of the workshop series devoted to the interaction between Computer Science and History…”
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    Conference Proceeding
  13. 13

    The structure of unseen trigrams and its application to language models: A first investigation by Lepage, Y, Gosme, J, Lardilleux, A

    ISBN: 9781424478217, 1424478219
    Published: IEEE 01.10.2010
    “…In a series of preparatory experiments in 4 languages on subsets of the Europarl corpus, we show that a large number of unseen trigrams can be reconstructed by…”
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    Conference Proceeding