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TextGraphs 2019 : 13th Workshop on Graph-based Methods for Natural Language Processing + Shared TaskConference Series : Graph-based Methods for Natural Language Processing | |||||||||||||||
Link: https://sites.google.com/view/textgraphs2019/ | |||||||||||||||
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Call For Papers | |||||||||||||||
Workshop at EMNLP-IJCNLP, Conference on Empirical Methods in Natural Language Processing and the 9th International Joint Conference on Natural Language Processing (November 3–7, 2019) in Hong Kong
Date: November 3 or November 4, 2019 Location: Hong Kong !!! We are excited to announce a shared task for this year’s workshop (see details below) !!! Website: https://sites.google.com/view/textgraphs2019 # WORKSHOP DESCRIPTION The TextGraphs series of workshops, now going on for more than a decade, have published and promoted the synergy between the field of Graph Theory (GT) and Natural Language Processing (NLP). The thirteenth edition of the TextGraphs workshop aims to extend the focus on graph-based and graph-supported machine learning and deep learning methods. We encourage the description of novel NLP problems or applications that have emerged in recent years, which can be addressed with existing and new graph-based methods. Furthermore, we also encourage research on applications of multi-hop inference and graph-based methods in the area of Semantic Web in order to link them to related NLP problems and applications. The target audience comprises researchers working on problems related to either Graph Theory or graph-based algorithms applied to Natural Language Processing, social media, and the Semantic Web. # WORKSHOP TOPICS TextGraphs invites submissions on (but not limited to) the following topics (see the website for a full list): * Graph embeddings * Graph-based and graph-supported deep learning (e.g., graph-based recurrent and recursive networks) * Probabilistic graphical models and structure learning methods * Graph-based methods for reasoning and interpreting deep neural networks * Exploration of capabilities and limitations of graph-based methods being applied to neural networks * Investigation of aspects of neural networks that are (not) susceptible to graph-based analysis * Graph-based methods for Information Retrieval, Information Extraction, and Text Mining * Graph-based methods for word sense disambiguation * Graph-based strategies for semantic relation identification * Encoding semantic distances in graphs * Graph-based techniques for text summarization, simplification, and paraphrasing * Graph-based techniques for document navigation and visualization * New graph-based methods for NLP applications * Random walk methods in graphs * Spectral graph clustering * Semi-supervised graph-based methods * Small world graphs * Dynamic graph representations * Graph kernels * Graph-based methods for applications on social networks * Graph-based methods for NLP and Semantic Web * Inducing knowledge of ontologies into NLP applications using graphs # IMPORTANT DATES All submission deadlines are at 11:59 p.m. PST Paper submission: August 23, 2019 Notification of acceptance: September 19, 2019 Camera-ready submission: September 30, 2019 Workshop date: November 3 or 4, 2019 # SUBMISSION TextGraphs 2019 solicits both long and short paper submissions (more details on https://sites.google.com/view/textgraphs2019/). Submission is electronic, using the SoftConf START conference management system: https://www.softconf.com/emnlp2019/ws-TextGraphs-2019 # SHARED TASK: EXPLANATION REGENERATION We are excited to announce a shared task on Explanation Regeneration! The resulting papers will be peer-reviewed by participating teams, and accepted system descriptions will be presented along with the main workshop papers. Multi-hop inference is the task of combining more than one piece of information to solve an inference task, such as question answering. The shared task on Explanation Regeneration asks participants to develop methods to reconstruct gold explanations for elementary science questions, using a new corpus of gold explanations that provides supervision and instrumentation for this multi-hop inference task. This shared task focuses on explanation reconstruction, a stepping-stone towards general multi-hop inference over language. In particular, the inputs to this task consist of questions and their correct answers. Participating systems must extract and rank explanation sentences from a provided structured knowledge base such that the top-ranked sentences provide a complete explanation for the given answer. ## Example For example, for the question: "Which of the following is an example of an organism taking in nutrients?" with the correct answer: "a girl eating an apple", an ideal system would rank the following explanatory statements at the top of its extracted sentences: 1. A girl means a human girl. 2. Humans are living organisms. 3. Eating is when an organism takes in nutrients in the form of food. 4. Fruits are kinds of foods. 5. An apple is a kind of fruit. The data used in this shared task contains 1,680 questions, together with explanation sentences for their correct answers (Jansen et al., 2018). The knowledge base supporting these questions contains approximately 5,000 facts. Please see the shared task website for more details: https://github.com/umanlp/tg2019task Competition on CodaLab: https://competitions.codalab.org/competitions/20150 ## Important Dates for Shared Task 13-05-2019: Example (trial) data release 17-05-2019: Training data release 12-07-2019: Test data release; Evaluation start 09-08-2019: Evaluation end 23-08-2019: System description paper deadline 11-09-2019: Deadline for reviews of system description papers 16-09-2019: Author notifications 30-09-2019: Camera-ready description paper deadline 03-11-2019/04-11-2019: TextGraphs-13 workshop # PROGRAM COMMITTEE Željko Agić, IT University of Copenhagen, Denmark Tomáš Brychcín, University of West Bohemia, Czech Republic Flavio Massimiliano Cecchini, Università Cattolica del Sacro Cuore, Italy Tanmoy Chakraborty, Indian Institute of Technology Delhi, India Mihail Chernoskutov, Krasovskii Institute of Mathematics and Mechanics, Russia Stefano Faralli, University of Rome Unitelma Sapienza, Italy Michael Flor, Educational Testing Service, USA Sorcha Gilroy, University of Edinburgh, UK Carlos Gómez-Rodríguez, Universidade da Coruña, Spain Tomáš Hercig, University of West Bohemia, Czech Republic Anne Lauscher, University of Mannheim, Germany Suman Kalyan Maity, Northwestern University, USA Fragkiskos Malliaros, École Centrale, France Gabor Melli, Sony PlayStation, USA Mohsen Mesgar, Ubiquitous Knowledge Processing (UKP) Lab, Germany Clayton Morrison, University of Arizona, USA Animesh Mukherjee, Indian Institute of Technology Kharagpur, India Giannis Nikolentzos, École Polytechnique, France Enrique Noriega-Atala, University of Arizona, USA Simone Paolo Ponzetto, University of Mannheim, Germany Jan Wira Gotama Putra, Tokyo Institute of Technology, Japan Natalie Schluter, IT University, Danmark Rebecca Sharp, University of Arizona, USA Konstantinos Skianis, École Polytechnique, France Nicolas Turenne, Université Paris-Est Marne-la-Vallée, France Kateryna Tymoshenko, University of Trento, Italy Ivan Vulić, University of Cambridge, UK Vikas Yadav, University of Arizona, USA Rui Zhang, Yale University, USA # ORGANIZERS Dmitry Ustalov, University of Mannheim Peter Jansen, University of Arizona Swapna Somasundaran, Educational Testing Service Goran Glavaš, University of Mannheim Martin Riedl, University of Stuttgart Mihai Surdeanu, University of Arizona Michalis Vazirgiannis, Ecole Polytechnique # CONTACT Please direct all questions and inquiries to our official e-mail address (textgraphsOC@gmail.com) or contact any of the organizers via their individual emails. Connect with us on social media: * Join us on Facebook: https://www.facebook.com/groups/900711756665369/ * Follow us on Twitter: https://twitter.com/textgraphs * Join us on LinkedIn: https://www.linkedin.com/groups/4882867 |
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