In TREC 2011, we focus on tackling the new challenges proposed
by the pilot Crowdsourcing and Microblog tracks, using
our Terrier Information Retrieval Platform. Meanwhile,
we continue to build upon our novel xQuAD framework and
data-driven ranking approaches within Terrier to achieve effective
and efficient ranking for the TREC Web track. In
particular, the aim of our Microblog track participation is
the development of a learning to rank approach for filtering
within a tweet ranking environment, where tweets are
ranked in reverse chronological order. In the Crowdsourcing
track, we work to achieve a closer integration between
the crowdsourcing marketplaces that are used for relevance
assessment, and Terrier, which produces the document rankings
to be assessed. Moreover, we focus on generating relevance
assessments quickly and at a minimal cost. For the
Web track, we enhance the data-driven learning support
within Terrier by proposing a novel framework for the fast
computation of document features for learning to rank.
Richard McCreadie, Craig Macdonald, Rodrygo. Santos and Iadh Ounis.
University of Glasgow at TREC 2011: Experiments with Terrier in Crowdsourcing, Microblog, and
Web Tracks.
In Proceedings of TREC 2011
0 comments:
Post a Comment