Unsupervised Declarative Knowledge Induction for Constraint-Based Learning of Information Structure in Scientific Documents
Author(s) -
Yufan Guo,
Roi Reichart,
Anna Korhonen
Publication year - 2015
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00128
Subject(s) - computer science , constraint (computer aided design) , artificial intelligence , task (project management) , feature (linguistics) , machine learning , key (lock) , unsupervised learning , natural language processing , information retrieval , mechanical engineering , linguistics , philosophy , computer security , management , engineering , economics
Inferring the information structure of scientific documents is useful for many NLP applications. Existing approaches to this task require substantial human effort. We propose a framework for constraint learning that reduces human involvement considerably. Our model uses topic models to identify latent topics and their key linguistic features in input documents, induces constraints from this information and maps sentences to their dominant information structure categories through a constrained unsupervised model. When the induced constraints are combined with a fully unsupervised model, the resulting model challenges existing lightly supervised feature-based models as well as unsupervised models that use manually constructed declarative knowledge. Our results demonstrate that useful declarative knowledge can be learned from data with very limited human involvement.
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