Mining Context-Aware Association Rules Using Grammar-Based Genetic Programming
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- @Article{Luna18a,
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author = "Jose Maria Luna and Mykola Pechenizkiy and
Maria Jose {del Jesus} and Sebastian Ventura",
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title = "Mining Context-Aware Association Rules Using
Grammar-Based Genetic Programming",
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journal = "IEEE Transactions on Cybernetics",
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year = "2018",
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volume = "48",
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number = "11",
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pages = "3030--3044",
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month = nov,
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keywords = "genetic algorithms, genetic programming, Association
rules, context awareness, contextual features",
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publisher = "IEEE",
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ISSN = "2168-2267",
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DOI = "doi:10.1109/TCYB.2017.2750919",
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size = "15 pages",
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abstract = "Real-world data usually comprise features whose
interpretation depends on some contextual information.
Such contextual-sensitive features and patterns are of
high interest to be discovered and analysed in order to
obtain the right meaning. This paper formulates the
problem of mining context-aware association rules,
which refers to the search for associations between
itemsets such that the strength of their implication
depends on a contextual feature. For the discovery of
this type of associations, a model that restricts the
search space and includes syntax constraints by means
of a grammar-based genetic programming methodology is
proposed. Grammars can be considered as a useful way of
introducing subjective knowledge to the pattern mining
process as they are highly related to the background
knowledge of the user. The performance and usefulness
of the proposed approach is examined by considering
synthetically generated datasets. A posteriori analysis
on different domains is also carried out to demonstrate
the utility of this kind of associations. For example,
in educational domains, it is essential to identify and
understand contextual and context-sensitive factors
that affect overall and individual student behaviour
and performance. The results of the experiments suggest
that the approach is feasible and it automatically
identifies interesting context-aware associations from
real-world datasets.",
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notes = "PubMed ID: 28952954 also known as \cite{8049471}",
- }
Genetic Programming entries for
Jose Maria Luna
Mykola Pechenizkiy
Maria Jose del Jesus
Sebastian Ventura
Citations