This paper describes the participation of USTB PRIR team in the 2017 BioASQ 5B on question answering, including document retrieval, snippet retrieval and concept retrieval task. We introduce different multimodal query processing strategies to enrich query terms and assign different weights to them. Specifically, sequential dependence model (SDM), pseudo relevance feedback (PRF), fielded sequential dependence model (FSDM) and Divergence from Randomness model (DFRM) are respectively performed on different fields of PubMed articles, sentences extracted from relevant articles, the five terminologies or ontologies (MeSH, GO, Jochem, Uniprot and DO) to achieve better search performances. Preliminary results show that our systems outperform others in the document and snippet retrieval task in the first two batches.
CITATION STYLE
Jin, Z. X., Zhang, B. W., Fang, F., Zhang, L. L., & Yin, X. C. (2017). A Multi-strategy Query Processing Approach for Biomedical Question Answering: USTB PRIR at BioASQ 2017 Task 5B. In BioNLP 2017 - SIGBioMed Workshop on Biomedical Natural Language Processing, Proceedings of the 16th BioNLP Workshop (pp. 373–380). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/w17-2348
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