SERF: integrating human recommendations with search Public Deposited


Attribute NameValues
Abstract or Summary
  • Today's university library has many digitally accessible resources, both indexes to content and considerable original content. Using off-the-shelf search technology provides a single point of access into library resources, but we have found that such full-text indexing technology is not entirely satisfactory for library searching. In response to this, we report initial usage results from a prototype of an entirely new type of search engine - The System for Electronic Recommendation Filtering (SERF) - that we have designed and deployed for the Oregon State University (OSU) Libraries. SERF encourages users to enter longer and more informative queries, and collects ratings from users as to whether search results meet their information need or not. These ratings are used to make recommendations to later users with similar needs. Over time, SERF learns from the users what documents are valuable for what information needs. In this paper, we focus on understanding whether such recommendations can increase other users' search efficiency and effectiveness in library website searching. Based on examination of three months of usage as an alternative search interface available to all users of the Oregon State University Libraries website (, we found strong evidence that the recommendations with human evaluation could increase the efficiency as well as effectiveness of the library website search process. Those users who received recommendations needed to examine fewer results, and recommended documents were rated much higher than documents returned by a traditional search engine.
Resource Type
Date Available
Date Issued
  • Proceedings of the thirteenth ACM conference on Information and knowledge management
Non-Academic Affiliation
Rights Statement
File Format
File Extent
  • 443460 bytes
Additional Information
  • description.provenance : Made available in DSpace on 2005-07-18T13:39:01Z (GMT). No. of bitstreams: 1 p571-jung.pdf: 443460 bytes, checksum: 41e587cd24f642697c8727bf83598b41 (MD5) Previous issue date: 2004
  • description.provenance : Submitted by Janet Webster ( on 2005-07-14T22:27:13Z No. of bitstreams: 1 p571-jung.pdf: 443460 bytes, checksum: 41e587cd24f642697c8727bf83598b41 (MD5)
  • description.provenance : Approved for entry into archive by Bonnie Parks( on 2005-07-14T23:07:09Z (GMT) No. of bitstreams: 1 p571-jung.pdf: 443460 bytes, checksum: 41e587cd24f642697c8727bf83598b41 (MD5)
  • 1-58113-874-1


In Administrative Set:
Last modified: 07/14/2017

Downloadable Content

Download PDF

EndNote | Zotero | Mendeley