Feature Extraction for Collaborative Filtering: A Genetic Programming Approach
Created by W.Langdon from
gp-bibliography.bib Revision:1.8120
- @Article{Anand:2012:IJCSI,
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author = "Deepa Anand",
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title = "Feature Extraction for Collaborative Filtering: A
Genetic Programming Approach",
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journal = "International Journal of Computer Science Issues",
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year = "2012",
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volume = "9",
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number = "5",
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pages = "348--354",
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month = sep,
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keywords = "genetic algorithms, genetic programming, Recommender
Systems, Collaborative Filtering, Feature Extraction",
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publisher = "IJCSI Press",
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ISSN = "16940784",
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bibsource = "OAI-PMH server at www.doaj.org",
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language = "eng",
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oai = "oai:doaj-articles:3fdb924cd5e50b8f275ce58daca88188",
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URL = "http://www.ijcsi.org/contents.php?volume=9&&issue=5",
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URL = "http://www.ijcsi.org/papers/IJCSI-9-5-1-348-354.pdf",
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size = "7 pages",
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abstract = "Collaborative filtering systems offer customised
recommendations to users by exploiting the
interrelationships between users and items. Users are
assessed for their similarity in tastes and items
preferred by similar users are offered as
recommendations. However scalability and scarcity of
data are the two major bottlenecks to effective
recommendations. With web based RS typically having
users in order of millions, timely recommendations pose
a major challenge. Sparsity of ratings data also
affects the quality of suggestions. To alleviate these
problems we propose a genetic programming approach to
feature extraction by employing GP to convert from
user-item space to user-feature preference space where
the feature space is much smaller than the item space.
The advantage of this approach lies in the reduction of
sparse high dimensional preference information into a
compact and dense low dimensional preference data. The
features are constructed using GP and the individuals
are evolved to generate the most discriminative set of
features. We compare our approach to content based
feature extraction approach and demonstrate the
effectiveness of the GP approach in generating the
optimal feature set.",
- }
Genetic Programming entries for
Deepa Anand
Citations