Proceedings of the 27th International Conference on Computational Linguistics: Tutorial Abstracts
NLP for Conversations: Sentiment, Summarization, and Group Dynamics (C18-3)
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| Challenge: | a tutorial focuses on computational models for conversational structure, summarization and sentiment detection, and group dynamics. |
| Approach: | a tutorial will provide examples of specific NLP tasks for conversational structure, summarization and sentiment detection, and group dynamics. |
| Outcome: | The tutorial focuses on the three areas of conversational structure, summarization and sentiment detection, and group dynamics. |
Practical Parsing for Downstream Applications (C18-3)
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| Challenge: | . - (EN) |
| Approach: | . - (EN) |
| Outcome: | . - (EN) |
Frame Semantics across Languages: Towards a Multilingual FrameNet (C18-3)
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| Challenge: | This workshop will present current research on aligning Frame Semantic resources across languages . resources based on FrameNet have been created for roughly a dozen languages based upon Fillmore's Frame Sementics . |
| Approach: | This workshop will present current research on aligning Frame Semantic resources across languages . resources based on FrameNet have been created for roughly a dozen languages based upon Fillmore's Frame Sementics . |
| Outcome: | This workshop will present current research on aligning Frame Semantic resources across languages and automatic frame semantic parsing in English and other languages. |
Deep Bayesian Learning and Understanding (C18-3)
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| Challenge: | COLING 2018 is a conference for researchers and practitioners working on machine learning and deep learning. |
| Approach: | a tutorial on machine learning and deep learning will be presented at COLING 2018 . the tutorial will focus on statistical models, deep neural networks, sequential learning and natural language understanding . |
| Outcome: | This tutorial will present the latest advances in deep Bayesian and sequential learning at COLING 2018 . |
Data-Driven Text Simplification (C18-3)
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| Challenge: | Automatic text simplification is the process of transforming a complex text into an equivalent version which would be easier to read or understand by automatic natural language processors. |
| Approach: | This tutorial provides an overview of automatic text simplification, which is the process of transforming a complex text into an equivalent version. |
| Outcome: | The aim of this paper is to provide a comprehensive overview of past and current research on automatic text simplification. |
Deep Learning for Dialogue Systems (C18-3)
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| Challenge: | Using deep learning to build robust and scalable spoken dialogue systems is still a challenging task. |
| Approach: | tutorial focuses on an overview of dialogue system development . goal-oriented spoken dialogue systems are most prominent component in virtual personal assistants . |
| Outcome: | This tutorial focuses on an overview of dialogue system development while summarizing the challenges. |