Deep Learning Approaches to Text Production
- Computers
- Categories:Computers & Internet
- Language:English(Translation Services Available)
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- Pages:199
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Description
Author
Shashi Narayan is a research scientist at Google in London. Prior to joining Google, he was a post-doctoral researcher at the University of Edinburgh. This book was written while he was still at the University of Edinburgh. He received his Ph.D. from the University of Lorraine. His research focuses on natural language generation understanding and structured predictions. The questions raised in his research are relevant to various natural language applications such as question answering, paraphrase generation, semantic and syntactic parsing, document understanding and summarisation, and text simplification. His research has appeared in computational linguistics journals (e.g., TACL, Computational Linguistics,and Pattern Recognition Letters) and in conferences (e.g., ACL, EMNLP, NAACL, COLING, EACL and INLG). He was nominated to the SIGGEN board (2012–14) as a student member. He co-organised the WebNLG Shared Task, a challenge on generating text from RDF data. He served as an area co-chair for Generation at NAACL HLT 2018 and ACL 2020, and for Summarisation at ACL and EMNLP 2019.
Claire Gardent, CNRS/LORIA, Nancy
Claire Gardent is a research scientist at CNRS, the French National Center for Scientific Research. Prior to joining the CNRS, she worked at the Universite de Clermont-Ferrand (France), Saarbrucken Universitat (Germany), Utrecht, and Amsterdam Universiteit (The Netherlands). She received her Ph.D. from the University of Edinburgh and her M.Sc. from Essex University. She was nominated Chair of the EACL and acted as program chair for various international conferences, workshops, and summer schools (EACL, ENLG, SemDIAL, SIGDIAL, ESSLLI,*SEM). She served on the editorial board of the journals Computational Linguistics, Journal of Semantics and Traitement Automatique des Langues, recently headed the WebNLG project (Nancy,Bolzano, Stanford SRI), and acted as chair of SIGGEN, the ACL Special Interest Group in Natural Language Generation. She also co-organised the WebNLG Shared Task, a challenge on generating text from RDF data. Her research interests include executable semantic parsing, natural language generation, question answering, dialogue and the use of computational linguistics for linguistic analysis.
Contents
Pre-Neural Approaches
Deep Learning Frameworks
Generating Better Text
Building Better Input Representations
Modelling Task-Specific Communication Goals
Data Sets and Challenges
Conclusion
Bibliography
Authors' Biographies