Lei Yang
University of Michigan
4 Papers
16 Citations
Lei Yang is an academic researcher from University of Michigan. The author has contributed to research in topics: Web query classification & Web search query. The author has an hindex of 4, co-authored 4 publications.
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Papers
•Proceedings Article
Voice-dictated versus typed-in clinician notes: linguistic properties and the potential implications on natural language processing.
Kai Zheng,Qiaozhu Mei,Lei Yang,Frank J. Manion,Ulysses J. Balis,David A. Hanauer +5 more
- 22 Oct 2011
TL;DR: There exists a considerable amount of lexical and distributional differences between narrative clinician notes created via voice dictation versus those directly entered by clinicians via a computer keyboard, which could have a significant impact on the performance of natural language processing tools.
17
We know what @you #tag: does the dual role affect hashtag adoption?
Lei Yang,Tao Sun,Ming Zhang,Qiaozhu Mei +3 more
- 16 Apr 2012
TL;DR: This work proposes comprehensive measures to quantify the major factors of how a user selects content tags as well as joins communities, and proves the effectiveness of the dual role, where both the content measures and the community measures significantly correlate to hashtag adoption on Twitter.
•Proceedings Article
Query log analysis of an electronic health record search engine.
Lei Yang,Qiaozhu Mei,Kai Zheng,David A. Hanauer +3 more
- 01 Jan 2011
TL;DR: There exists a significant challenge, along with significant opportunities, to provide intelligent query recommendations to facilitate information retrieval in EHR, and the results suggest that information needs in medical domain are substantially more sophisticated than those that general-purpose web search engines need to accommodate.
Development and empirical user-centered evaluation of semantically-based query recommendation for an electronic health record search engine
David A. Hanauer,Danny T. Y. Wu,Lei Yang,Qiaozhu Mei,Katherine B. Murkowski-Steffy,V. G. Vinod Vydiswaran,Kai Zheng +6 more
TL;DR: Challenges persist for users to construct effective search queries when retrieving information from biomedical documents including those from EHRs, and this study demonstrates that semantically-based query recommendation is a viable solution to addressing this challenge.