Past tutorials: Difference between revisions
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|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T1] | |[http://www.acl2019.org/EN/tutorials.xhtml#T1] | ||
| | |[https://www.aclweb.org/anthology/P19-4001/] | ||
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|Graph-Based Meaning Representations: Design and Processing | |Graph-Based Meaning Representations: Design and Processing | ||
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|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T2] | |[http://www.acl2019.org/EN/tutorials.xhtml#T2] | ||
| | |[https://www.aclweb.org/anthology/P19-4002/] | ||
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|Discourse Analysis and Its Applications | |Discourse Analysis and Its Applications | ||
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|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T3] | |[http://www.acl2019.org/EN/tutorials.xhtml#T3] | ||
| | |[https://www.aclweb.org/anthology/P19-4003/] | ||
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|Computational Analysis of Political Texts: Bridging Research Efforts Across Communities | |Computational Analysis of Political Texts: Bridging Research Efforts Across Communities | ||
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|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T4] | |[http://www.acl2019.org/EN/tutorials.xhtml#T4] | ||
| | |[https://www.aclweb.org/anthology/P19-4004/] | ||
|- | |- | ||
|Wikipedia as a Resource for Text Analysis and Retrieval | |Wikipedia as a Resource for Text Analysis and Retrieval | ||
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|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T5] | |[http://www.acl2019.org/EN/tutorials.xhtml#T5] | ||
| | |[https://www.aclweb.org/anthology/P19-4005/] | ||
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|Deep Bayesian Natural Language Processing | |Deep Bayesian Natural Language Processing | ||
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|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T6] | |[http://www.acl2019.org/EN/tutorials.xhtml#T6] | ||
| | |[https://www.aclweb.org/anthology/P19-4006/] | ||
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|Unsupervised Cross-Lingual Representation Learning | |Unsupervised Cross-Lingual Representation Learning | ||
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|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T7] | |[http://www.acl2019.org/EN/tutorials.xhtml#T7] | ||
| | |[https://www.aclweb.org/anthology/P19-4007/] | ||
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|Advances in Argument Mining | |Advances in Argument Mining | ||
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|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T8] | |[http://www.acl2019.org/EN/tutorials.xhtml#T8] | ||
| | |[https://www.aclweb.org/anthology/P19-4008/] | ||
|- | |- | ||
|Storytelling from Structured Data and Knowledge Graphs : An NLG Perspective | |Storytelling from Structured Data and Knowledge Graphs : An NLG Perspective | ||
| Line 62: | Line 62: | ||
|ACL 2019 | |ACL 2019 | ||
|[http://www.acl2019.org/EN/tutorials.xhtml#T9] | |[http://www.acl2019.org/EN/tutorials.xhtml#T9] | ||
| | |[https://www.aclweb.org/anthology/P19-4009/] | ||
|- | |- | ||
|Deep Adversarial Learning for NLP | |Deep Adversarial Learning for NLP | ||
Revision as of 13:31, 18 February 2020
This page belongs to the tutorial chair handbook. It summarizes data on tutorials which took place at some recent ACL, EACL, NAACL, EMNLP and COLING conferences.
2019 tutorials
| Title | Trainers | Conference | Conference link | ACL Anthology link |
| Latent Structure Models for Natural Language Processing | André F. T. Martins, Tsvetomila Mihaylova, Nikita Nangia and Vlad Niculae | ACL 2019 | [1] | [2] |
| Graph-Based Meaning Representations: Design and Processing | Alexander Koller, Stephan Oepen and Weiwei Sun | ACL 2019 | [3] | [4] |
| Discourse Analysis and Its Applications | Shafiq Joty, Giuseppe Carenini, Raymond Ng and Gabriel Murray | ACL 2019 | [5] | [6] |
| Computational Analysis of Political Texts: Bridging Research Efforts Across Communities | Goran Glavaš, Federico Nanni and Simone Paolo Ponzetto | ACL 2019 | [7] | [8] |
| Wikipedia as a Resource for Text Analysis and Retrieval | Marius Pasca | ACL 2019 | [9] | [10] |
| Deep Bayesian Natural Language Processing | Jen-Tzung Chien | ACL 2019 | [11] | [12] |
| Unsupervised Cross-Lingual Representation Learning | Sebastian Ruder, Anders Søgaard and Ivan Vulić | ACL 2019 | [13] | [14] |
| Advances in Argument Mining | Katarzyna Budzynska and Chris Reed | ACL 2019 | [15] | [16] |
| Storytelling from Structured Data and Knowledge Graphs : An NLG Perspective | Abhijit Mishra, Anirban Laha, Karthik Sankaranarayanan, Parag Jain and Saravanan Krishnan | ACL 2019 | [17] | [18] |
| Deep Adversarial Learning for NLP | William Yang Wang, Sameer Singh and Jiwei Li | NAACL 2019 | [19] | [20] |
| Deep Learning for Natural Language Inference | Samuel Bowman and Xiaodan Zhu | NAACL 2019 | [21] | [22] |
| Measuring and Modeling Language Change | Jacob Eisenstein | NAACL 2019 | [23] | [24] |
| Transfer Learning in Natural Language Processing | Sebastian Ruder, Matthew Peters, Swabha Swayamdipta and Thomas Wolf | NAACL 2019 | [25] | [26] |
| Language Learning and Processing in People and Machines | Aida Nematzadeh, Richard Futrell and Roger Levy | NAACL 2019 | [27] | [28] |
| Applications of Natural Language Processing in Clinical Research and Practice | Yanshan Wang, Ahmad Tafti, Sunghwan Sohn and Rui Zhang | NAACL 2019 | [29] | [30] |
2018 tutorials
| Title | Trainers | Conference | Conference link | ACL Anthology link |
| Joint models for NLP | Yue Zhang | EMNLP 2018 | [31] | |
| Graph Formalisms for Meaning Representations | Adam Lopez and Sorcha Gilroy | EMNLP 2018 | [32] | |
| Writing Code for NLP Research | Matt Gardner, Mark Neumann, Joel Grus, and Nicholas Lourie | EMNLP 2018 | [33] | |
| Deep Latent Variable Models of Natural Language | Alexander Rush, Yoon Kim, and Sam Wiseman | EMNLP 2018 | [34] | |
| Standardized Tests as benchmarks for Artificial Intelligence | Mrinmaya Sachan, Minjoon Seo, Hannaneh Hajishirzi, and Eric Xing | EMNLP 2018 | [35] | |
| Deep Chit-Chat: Deep Learning for ChatBots | Wei Wu and Rui Yan | EMNLP 2018 | [36] | |
| 100 Things You Always Wanted to Know about Semantics & Pragmatics But Were Afraid to Ask | Emily M. Bender | ACL 2018 | [37] | [38] |
| Neural Approaches to Conversational AI | Jianfeng Gao, Michel Galley and Lihong Li | ACL 2018 | [39] | [40] |
| Variational Inference and Deep Generative Models | Wilker Aziz and Philip Schulz | ACL 2018 | [41] | [42] |
| Connecting Language and Vision to Actions | Peter Anderson, Abhishek Das and Qi Wu | ACL 2018 | [43] | [44] |
| Beyond Multiword Expressions: Processing Idioms and Metaphors | Valia Kordoni | ACL 2018 | [45] | [46] |
| Neural Semantic Parsing | Luke Zettlemoyer, Matt Gardner, Pradeep Dasigi, Srinivasan Iyer and Alane Suhr | ACL 2018 | [47] | [48] |
| Deep Reinforcement Learning for NLP | William Yang Wang, Jiwei Li and Xiaodong He | ACL 2018 | [49] | [50] |
| Multi-lingual Entity Discovery and Linking | Avirup Sil, Heng Ji, Dan Roth and Silviu-Petru Cucerzan | ACL 2018 | [51] | [52] |
| Modelling Natural Language, Programs, and their Intersection | Graham Neubig and Miltiadis Allamanis | NAACL 2018 | [53] | |
| Deep Learning Approaches to Text Production | Claire Gardent and Shashi Narayan | NAACL 2018 | [54] | |
| Scalable Construction and Reasoning of Massive Knowledge Bases | Xiang Ren, Nanyun Peng and William Yang Wang | NAACL 2018 | [55] | |
| The interplay between lexical resources and Natural Language Processing | Jose Camacho-Collados, Luis Espinosa Anke and Mohammad Taher Pilehvar | NAACL 2018 | [56] | |
| Socially Responsible NLP | Yulia Tsvetkov, Vinodkumar Prabhakaran and Rob Voigt | NAACL 2018 | [57] | |
| Deep Learning for Conversational AI | Pei-Hao Su, Nikola Mrkšić, Iñigo Casanueva, Ivan Vulić | NAACL 2018 | [58] | |
| NLP for Conversations: Sentiment, Summarization, and Group Dynamics | Gabriel Murray, Giuseppe Carenini and Shafiq Joty | COLING 2018 | [59] | [60] |
| Practical Parsing for Downstream Applications | Daniel Dakota and Sandra Kübler | COLING 2018 | [61] | [62] |
| Frame Semantics across Languages: Towards a Multilingual FrameNet | Collin Baker, Michael Ellsworth, Miriam R L Petruck and Swabha Swayamdipta | COLING 2018 | [63] | [64] |
| Deep Bayesian Learning and Understanding | Jen-Tzung Chien | COLING 2018 | [65] | [66] |
| Data-Driven Text Simplification | Sanja Štajner and Horacio Saggion | COLING 2018 | [67] | [68] |
| Deep Learning for Dialogue Systems | Yun-Nung Chen, Asli Celikyilmaz and Dilek Hakkani-Tur | COLING 2018 | [69] | [70] |
2017 tutorials
EMNLP 2017 website is no longer available. There are no traces of the AMNLP 2017 tutorials, except this Facebook post.
| Title | Trainers | Conference | Conference link | ACL Anthology link |
| Universal Dependencies | Joakim Nivre, Daniel Zeman, Filip Ginter, and Francis Tyers | EACL 2017 | [71] | |
| Practical Neural Machine Translation | Rico Sennrich and Barry Haddow | EACL 2017 | [72] | |
| Imitation learning for structured prediction in natural language processing | Andreas Vlachos, Gerasimos Lampouras and Sebastian Riedel | EACL 2017 | [73] | |
| Word Vector Space Specialisation | Ivan Vulić, Nikola Mrkšić, and Mohammad Taher Pilehvar | EACL 2017 | [74] | |
| Integer Linear Programming formulations in Natural Language Processing | Dan Roth and Vivek Srikumar | EACL 2017 | [75] | |
| Building Multimodal Simulations for Natural Language | James Pustejovsky and Nikhil Krishnaswamy | EACL 2017 | [76] | |
| Natural Language Processing for Precision Medicine | Hoifung Poon, Chris Quirk, Kristina Toutanova, and Wen-tau Yih | ACL 2017 | [77] | [78] |
| Multimodal Machine Learning | Louis-Philippe Morency and Tadas Baltrusaitis | ACL 2017 | [79] | [80] |
| Deep Learning for Semantic Composition | Xiaodan Zhu and Edward Grefenstette | ACL 2017 | [81] | [82] |
| Deep Learning for Dialogue Systems | Yun-Nung Chen, Asli Celikyilmaz, and Dilek Hakkani-Tur | ACL 2017 | [83] | [84] |
| Beyond Words: Deep Learning for Multi-word Expressions and Collocations | Valia Kordoni | ACL 2017 | [85] | [86] |
| Making Better Use of the Crowd | Jennifer Wortman Vaughan | ACL 2017 | [87] | [88] |
2016 tutorials
| Title | Trainers | Conference | Conference link | ACL Anthology link |
| Multimodal Learning and Reasoning | Desmond Elliott, Douwe Kiela and Angeliki Lazaridou | ACL 2016 | [89] | |
| NLP Approaches to Computational Argumentation | Noam Slonim, Iryna Gurevych, Chris Reed and Benno Stein | ACL 2016 | [90] | |
| Computer Aided Translation | Philipp Koehn | ACL 2016 | [91] | |
| Semantic Representations of Word Senses and Concepts | José Camacho-Collados, Ignacio Iacobacci, Roberto Navigli and Mohammad Taher Pilehvar | ACL 2016 | [92] | |
| Neural Machine Translation | Thang Luong, Kyunghyun Cho and Christopher D. Manning | ACL 2016 | [93] | |
| Game Theory and Natural Language: Origin, Evolution and Processing | Rocco Tripodi and Marcello Pelillo | ACL 2016 | [94] | |
| Understanding Short Texts | Zhongyuan Wang and Haixun Wang | ACL 2016 | [95] | |
| MetaNet: Repository, Identification System, and Applications | Miriam R L Petruck and Ellen K Dodge | ACL 2016 | [96] | |
| English Resource Semantics | Dan Flickinger, Emily M. Bender, and Woodley Packard | NAACL 2016 | [97] | [98] |
| Multilingual Multimodal Language Processing Using Neural Networks | Mitesh M Khapra and Sarath Chandar | NAACL 2016 | [99] | [100] |
| Question Answering with Knowledge Base, Web and Beyond | Scott Wen-tau Yih & Hao Ma | NAACL 2016 | [101] | [102] |
| Recent Progress in Deep Learning for NLP | Zhengdong Lu and Hang Li | NAACL 2016 | [103] | [104] |
| Scalable Statistical Relational Learning for NLP | William Yang Wang and William W. Cohen | NAACL 2016 | [105] | [106] |
| Statistical Machine Translation between Related Languages | Pushpak Bhattacharyya, Mitesh Khapra, and Anoop Kunchukuttan | NAACL 2016 | [107] | [108] |
| Practical Neural Networks for NLP: From Theory to Code | Chris Dyer, Yoav Goldberg and Graham Neubig | EMNLP 2016 | [109] | |
| Advanced Markov Logic Techniques for Scalable Joint Inference in NLP | Deepak Venugopal, Vibhav Gogate and Vincent Ng | EMNLP 2016 | [110] | |
| Lifelong Machine Learning for Natural Language Processing | Zhiyuan Chen and Bing Liu | EMNLP 2016 | [111] | |
| Neural Networks for Sentiment Analysis | Yue Zhang and Duy Tin Vo | EMNLP 2016 | [112] | |
| Continuous Vector Spaces for Cross-language NLP Applications | Rafael E. Banchs | EMNLP 2016 | [113] | |
| Methods and Theories for Large-scale Structured Prediction | Xu Sun and Yansong Feng | EMNLP 2016 | [114] | |
| Compositional Distributional Models of Meaning | Mehrnoosh Sadrzadeh and Dimitri Kartsaklis | COLING 2016 | [115] | [116] |
| Chinese Textual Sentiment Analysis: Datasets, Resources and Tools | Lun-Wei Ku and Wei-Fan Chen | COLING 2016 | [117] | [118] |
| Natural Language Processing for Intelligent Access to Scientific Information | Horacio Saggion and Francesco Ronzano | COLING 2016 | [119] | [120] |
| Quality Estimation for Language Output Applications | Carolina Scarton, Gustavo Henrique Paetzold, and Lucia Specia | COLING 2016 | [121] | [122] |
| Translationese: Between Human and Machine Translation | Shuly Wintner | COLING 2016 | [123] | [124] |
| Succinct Data Structures for NLP-at-Scale | Matthias Petri and Trevor Cohn | COLING 2016 | [125] | [126] |
| The Role of Wikipedia in Text Analysis and Retrieval | Marius Pasca | COLING 2016 | [127] | [128] |
Author: Agata Savary, July 2019
Updates are welcome