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Hypothesis generation and ranking based on event similarities

Authors :
Taiki Miyanishi
Kuniaki Uehara
Kazuhiro Seki
Source :
SAC
Publication Year :
2010
Publisher :
ACM, 2010.

Abstract

Accelerated by the technological advances in the domain, the size of the biomedical literature has been growing rapidly. As a result, it is not feasible for individual researchers to comprehend and synthesize all the information related to their interests. Therefore, it is conceivable to discover hidden knowledge, or hypotheses, by linking fragments of information independently described in the literature. In fact, such hypotheses have been reported in the literature mining community; some of which have even been corroborated by experiments. This paper mainly focuses on hypothesis ranking and investigates an approach to identifying reasonable ones based on semantic similarities between events which lead to respective hypotheses. Our assumption is that hypotheses generated from semantically similar events are more reasonable. The validity of our approach is demonstrated in comparison with those based on term frequencies, often adopted in the related work.

Details

Database :
OpenAIRE
Journal :
Proceedings of the 2010 ACM Symposium on Applied Computing
Accession number :
edsair.doi...........9430c738f565b93ecec51860183099a8