Grounding Natural Language Inference on Images
Vyvozování v přirozeném jazyce s využitím obrazových dat
diploma thesis (DEFENDED)

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http://hdl.handle.net/20.500.11956/101573Identifiers
Study Information System: 191640
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- Kvalifikační práce [11325]
Author
Advisor
Referee
Libovický, Jindřich
Faculty / Institute
Faculty of Mathematics and Physics
Discipline
Computational Linguistics
Department
Institute of Formal and Applied Linguistics
Date of defense
11. 9. 2018
Publisher
Univerzita Karlova, Matematicko-fyzikální fakultaLanguage
English
Grade
Very good
Keywords (Czech)
vyvozování v přirozeném jazyceKeywords (English)
Grounding Natural Language Inference on ImagesGrounding Natural Language Inference on Images Hoa Trong VU July 20, 2018 Abstract Despite the surge of research interest in problems involving linguistic and vi- sual information, exploring multimodal data for Natural Language Inference remains unexplored. Natural Language Inference, regarded as the basic step towards Natural Language Understanding, is extremely challenging due to the natural complexity of human languages. However, we believe this issue can be alleviated by using multimodal data. Given an image and its description, our proposed task is to determined whether a natural language hypothesis contra- dicts, entails or is neutral with regards to the image and its description. To address this problem, we develop a multimodal framework based on the Bilat- eral Multi-perspective Matching framework. Data is collected by mapping the SNLI dataset with the image dataset Flickr30k. The result dataset, made pub- licly available, has more than 565k instances. Experiments on this dataset show that the multimodal model outperforms the state-of-the-art textual model. References 1