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BIO‐MOLECULAR EVENT EXTRACTION WITH MARKOV LOGIC
Authors:Sebastian Riedel  Rune Sætre  Hong‐Woo Chun  Toshihisa Takagi  Jun’ichi Tsujii
Affiliation:1. Department of Computer Science, University of Massachusetts Amherst, Amherst, USA;2. Department of Computer Science, University of Tokyo, Tokyo, Japan;3. Knowledge Information Center, Korea Institute of Science and Technology Information, Daejeon, Republic of Korea;4. Database Center for Life Science, Research Organization of Information and System, Tokyo, Japan
Abstract:This article presents a novel approach to event extraction from biological text using Markov Logic. It can be described by three design decisions: (1) instead of building a pipeline using local classifiers, we design and learn a joint probabilistic model over events in a sentence; (2) instead of developing specific inference and learning algorithms for our joint model, we apply Markov Logic, a general purpose Statistical Relation Learning language, for this task; (3) we represent events as relations over the token indices of a sentence, as opposed to structures that relate event entities to gene or protein mentions. In this article, we extend our original work by providing an error analysis for binding events. Moreover, we investigate the impact of different loss functions to precision, recall and F‐measure. Finally, we show how to extract events of different types that share the same event clue. This extension allowed us to improve our performance our performance even further, leading to the third best scores for task 1 (in close range to the second place) and the best results for task 2 with a 14% point margin.
Keywords:event extraction  joint inference  Markov Logic  BioNLP
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