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{
"text": "Building on the momentum generated by the spectacular success of the Joint Conference on Lexical and Computational Semantics (*SEM) in 2012, bringing together the ACL SIGLEX and ACL SIGSEM communities, we are delighted to bring to you the second edition of the conference, as a top-tier showcase of the latest research in computational semantics. We accepted 14 papers (11 long and 3 short) for publication at the conference, out of a possible 45 submissions (a 31% acceptance rate). This is on par with some of the most competitive conferences in computational linguistics, and we are confident will set the stage for a scintillating conference.",
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"section": "Introduction to *SEM 2013",
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"text": "This year, we started a tradition that we intend to maintain in all future iterations of the conference in integrating a shared task into the conference. The shared task was selected by an independent committee comprising members from SIGLEX and SIGSEM, based on an open call for proposals, and revolved around Semantic Textual Similarity (STS). The task turned out to be a huge success with 34 teams participating, submitting a total of 103 system runs.",
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"section": "Introduction to *SEM 2013",
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"text": "Day One, June 13th: Day Two, June 14th:",
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"section": "*SEM 2013 features a number of highlight events:",
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"text": "\u2022 A",
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"text": "\u2022 In the morning, a keynote address by David Forsyth from the Computer Science Department at the University of Illinois at Urbana Champagne on issues of Vision and Language. It promises to be an extremely stimulating speech, and is not to be missed.",
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"text": "\u2022 In the early afternoon, a panel on the relation between and future of *SEM, the *SEM Shared Task, SemEval and other events on computational semantics. In this panel, we will attempt to clarify and explain as well as devise plans for these different entities.",
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"text": "\u2022 Finally, at the end of the day, an award ceremony for the Best Long Paper and Best Short Paper.",
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"text": "iii As always, *SEM 2013 would not have been possible without the considerable efforts of our area chairs and an impressive assortment of reviewers, drawn from the ranks of SIGLEX and SIGSEM, and the computational semantics community at large. We would also like to acknowledge the generous support for the STS Task from the DARPA Deft Program.",
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"section": "*SEM 2013 features a number of highlight events:",
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"text": "The Semantic Evaluation (SemEval) series of workshops focus on the evaluation and comparison of systems that can analyse diverse semantic phenomena in text with the aim of extending the current state-of-the-art in semantic analysis and creating high quality annotated datasets in a range of increasingly challenging problems in natural language semantics. SemEval provides an exciting forum for researchers to propose challenging research problems in semantics and to build systems/techniques to address such research problems.",
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"section": "Introduction to SemEval",
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"text": "SemEval-2013 is the seventh workshop in the series. The first three workshops, SensEval-1 (1998), SensEval-2 (2001) , and SensEval-3 (2004), were focused on word sense disambiguation, each time growing in the number of languages offered in the tasks and in the number of participating teams. ",
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"text": "SensEval-2 (2001)",
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"section": "Introduction to SemEval",
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"text": "v",
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"section": "Introduction to SemEval",
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"text": "About 100 teams submitted more than 300 systems for the 12 tasks of SemEval-2013. This volume contains both Task Description papers that describe each of the above tasks and System Description papers that describe the systems that participated in the above tasks. A total of 12 task description papers and 101 system description papers are included in this volume.",
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"section": "Introduction to SemEval",
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"text": "We are indebted to all program committee members for their high quality, elaborate and thoughtful reviews. The papers in this proceedings have surely benefited from this feedback. We are grateful to *SEM 2013 and NAACL-HLT 2013 conference organizers for local organization and the forum. We most gratefully acknowledge the support of our sponsors, the ACL Special Interest Group on the Lexicon (SIGLEX) and the ACL Special Interest Group on Computational Semantics (SIGSEM). ",
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"section": "Introduction to SemEval",
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"text": "We hope you enjoy *SEM 2013, and look forward to engaging with all of you, Mona Diab (The George Washington University, General Chair) Timothy Baldwin (The University of Mebourne, Program Committee Co-Chair) Marco Baroni (University of Trento, Program Committee Co-Chair) Program Committee for Volume 1:Nabil Abdullah (University of Windsor), Eneko Agirre (University of the Basque Country), Nicholas Asher (CNRS Institut de Recherche en Informatique de Toulouse), Eser Ayg\u00fcn, Timothy Baldwin (The University of Melbourne), Eva Banik (Computational Linguistics Ltd), Marco Baroni (University of Trento), Alberto Barr\u00f3n-Cede\u00f1o (Universitat Polit\u00e8cnica de Catalunya), Roberto Basili (University of Roma, Tor Vergata), Miroslav Batchkarov (University of Sussex), Cosmin Bejan, Sabine Bergler (Concordia University), Shane Bergsma (Johns Hopkins University), Steven Bethard (University of Colorado Boulder), Ergun Bicici (Centre for Next Generation Localisation), Chris Biemann (TU Darmstadt), Eduardo Blanco (Lymba Corporation), Gemma Boleda (The University of Texas at Austin), Francis Bond (Nanyang Technological University), Paul Buitelaar (DERI, National University of Ireland, Galway), Razvan Bunescu (Ohio University), Harry Bunt (Tilburg University), Aljoscha Burchardt (DFKI), Davide Buscaldi (LIPN, Universit\u00e9 Paris 13), Olivia Buzek (Johns Hopkins University), Nicoletta Calzolari (ILC-CNR), Annalina Caputo (Dept. ",
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"section": "acknowledgement",
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"text": "timely and impressive panel on Towards Deep Natural Language Understanding,",
"content": "<table><tr><td>featuring the following panelists:</td></tr><tr><td>-Kevin Knight (USC/Information Sciences Institute)</td></tr><tr><td>-Chris Manning (Stanford University)</td></tr><tr><td>-Martha Palmer (University of Colorado at Boulder)</td></tr><tr><td>-Owen Rambow (Columbia University)</td></tr><tr><td>-Dan Roth (University of Illinois at Urbana-Champaign)</td></tr><tr><td>\u2022 A Reception and Shared Task Poster Session in the evening, thanks to the generous</td></tr><tr><td>sponsorship of the DARPA Deft program.</td></tr></table>"
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"text": "SemEval-2013 Task 1: TempEval-3: Evaluating Time Expressions, Events, and Temporal Relations Naushad UzZaman, Hector Llorens, Leon Derczynski, James Allen, Marc Verhagen and James",
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