| Literature DB >> 19684883 |
Abstract
Transaction logs from online search engines are valuable for two reasons: First, they provide insight into human information-seeking behavior. Second, log data can be used to train user models, which can then be applied to improve retrieval systems. This article presents a study of logs from PubMed((R)), the public gateway to the MEDLINE((R)) database of bibliographic records from the medical and biomedical primary literature. Unlike most previous studies on general Web search, our work examines user activities with a highly-specialized search engine. We encode user actions as string sequences and model these sequences using n-gram language models. The models are evaluated in terms of perplexity and in a sequence prediction task. They help us better understand how PubMed users search for information and provide an enabler for improving users' search experience.Entities:
Year: 2008 PMID: 19684883 PMCID: PMC2727615 DOI: 10.1007/s10791-008-9067-7
Source DB: PubMed Journal: Inf Retr Boston ISSN: 1386-4564 Impact factor: 2.293