Journal of Integrative Bioinformatics (Jun 2010)

The LAILAPS Search Engine: Relevance Ranking in Life Science Databases

  • Lange Matthias,
  • Spies Karl,
  • Bargsten Joachim,
  • Haberhauer Gregor,
  • Klapperstück Matthias,
  • Leps Michael,
  • Weinel Christian,
  • Wünschiers Röbbe,
  • Weißbach Mandy,
  • Stein Jens,
  • Scholz Uwe

DOI
https://doi.org/10.1515/jib-2010-110
Journal volume & issue
Vol. 7, no. 2
pp. 1 – 11

Abstract

Read online

Search engines and retrieval systems are popular tools at a life science desktop. The manual inspection of hundreds of database entries, that reflect a life science concept or fact, is a time intensive daily work. Hereby, not the number of query results matters, but the relevance does. In this paper, we present the LAILAPS search engine for life science databases. The concept is to combine a novel feature model for relevance ranking, a machine learning approach to model user relevance profiles, ranking improvement by user feedback tracking and an intuitive and slim web user interface, that estimates relevance rank by tracking user interactions. Queries are formulated as simple keyword lists and will be expanded by synonyms. Supporting a flexible text index and a simple data import format, LAILAPS can easily be used both as search engine for comprehensive integrated life science databases and for small in-house project databases.