Nonlinear ranking function representations in genetic programming-based ranking discovery for personalized search
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- @Article{journals/dss/FanPW06,
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title = "Nonlinear ranking function representations in genetic
programming-based ranking discovery for personalized
search",
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author = "Weiguo Fan and Praveen Pathak and Linda Wallace",
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journal = "Decision Support Systems",
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year = "2006",
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number = "3",
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volume = "42",
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pages = "1338--1349",
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month = dec,
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bibdate = "2007-01-23",
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bibsource = "DBLP,
http://dblp.uni-trier.de/db/journals/dss/dss42.html#FanPW06",
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keywords = "genetic algorithms, genetic programming, Information
routing, Information retrieval, Ranking function",
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DOI = "doi:10.1016/j.dss.2005.11.002",
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abstract = "Ranking function is instrumental in affecting the
performance of a search engine. Designing and
optimising a search engine's ranking function remains a
daunting task for computer and information scientists.
Recently, genetic programming (GP), a machine learning
technique based on evolutionary theory, has shown
promise in tackling this very difficult problem.
Ranking functions discovered by GP have been found to
be significantly better than many of the other existing
ranking functions. However, current GP implementations
for ranking function discovery are all designed using
the Vector Space model in which the same term weighting
strategy is applied to all terms in a document. This
may not be an ideal representation scheme at the
individual query level considering the fact that many
query terms should play different roles in the final
ranking. In this paper, we propose a novel nonlinear
ranking function representation scheme and compare this
new design to the well-known Vector Space model. We
theoretically show that the new representation scheme
subsumes the traditional Vector Space model
representation scheme as a special case and hence
allows for additional flexibility in term weighting. We
test the new representation scheme with the GP-based
discovery framework in a personalised search
(information routing) context using a TREC web corpus.
The experimental results show that the new ranking
function representation design outperforms the
traditional Vector Space model for GP-based ranking
function discovery.",
- }
Genetic Programming entries for
Weiguo Fan
Praveen Pathak
Linda G Wallace
Citations