Efficient Global Learning of Entailment Graphs

Author:

Berant Jonathan1,Alon Noga2,Dagan Ido3,Goldberger Jacob3

Affiliation:

1. Stanford University

2. Tel Aviv University

3. Bar-Ilan University

Abstract

Entailment rules between predicates are fundamental to many semantic-inference applications. Consequently, learning such rules has been an active field of research in recent years. Methods for learning entailment rules between predicates that take into account dependencies between different rules (e.g., entailment is a transitive relation) have been shown to improve rule quality, but suffer from scalability issues, that is, the number of predicates handled is often quite small. In this article, we present methods for learning transitive graphs that contain tens of thousands of nodes, where nodes represent predicates and edges correspond to entailment rules (termed entailment graphs). Our methods are able to scale to a large number of predicates by exploiting structural properties of entailment graphs such as the fact that they exhibit a “tree-like” property. We apply our methods on two data sets and demonstrate that our methods find high-quality solutions faster than methods proposed in the past, and moreover our methods for the first time scale to large graphs containing 20,000 nodes and more than 100,000 edges.

Publisher

MIT Press - Journals

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Language and Linguistics

Reference55 articles.

1. The Transitive Reduction of a Directed Graph

2. Angeli, Gabor and Christopher D. Manning. 2014. Naturalli: Natural logic inference for common sense reasoning. In Proceedings of EMNLP, pages 534–545, Doha.

3. Ben Aharon, Roni, Idan Szpektor, and Ido Dagan. 2010. Generating entailment rules from FrameNet. In Proceedings of ACL, pages 241–246, Uppsala.

4. Berant, Jonathan, Ido Dagan, Meni Adler, and Jacob Goldberger. 2012. Efficient tree-based approximation for entailment graph learning. In Proceedings of ACL, pages 117–125, Jeju Island.

5. Berant, Jonathan, Ido Dagan, and Jacob Goldberger. 2010. Global learning of focused entailment graphs. In Proceedings of ACL, pages 1,220–1,229, Uppsala.

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