Improvement of building field association term dictionary using passage retrieval

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摘要

Field Association (FA) terms are a limited set of discriminating terms that can specify document fields. Document fields can be decided efficiently if there are many relevant FA terms in that documents. An earlier approach built FA terms dictionary using a WWW search engine, but there were irrelevant selected FA terms in that dictionary because that approach extracted FA terms from the whole documents. This paper proposes a new approach for extracting FA terms using passage (portions of a document text) technique rather than extracting them from the whole documents. This approach extracts FA terms more accurately than the earlier approach. The proposed approach is evaluated for 38,372 articles from the large tagged corpus. According to experimental results, it turns out that by using the new approach about 24% more relevant FA terms are appending to the earlier FA term dictionary and around 32% irrelevant FA terms are deleted. Moreover, precision and recall are achieved 98% and 94% respectively using the new approach.

论文关键词:Field association terms,Passage retrieval,WWW search engine,FA terms dictionary,Recall,Precision

论文评审过程:Received 6 June 2006, Revised 13 December 2006, Accepted 23 December 2006, Available online 27 March 2007.

论文官网地址:https://doi.org/10.1016/j.ipm.2006.12.006