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Algorithms and Applications for Academic Search, Recommendation and Quantitative Association Rule Mining (Hardcover)
Loot Price: R2,327
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Algorithms and Applications for Academic Search, Recommendation and Quantitative Association Rule Mining (Hardcover)
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Algorithms and Applications for Academic Search, Recommendation and
Quantitative Association Rule Mining presents novel algorithms for
academic search, recommendation and association rule mining that
have been developed and optimized for different commercial as well
as academic purpose systems. Along with the design and
implementation of algorithms, a major part of the work presented in
the book involves the development of new systems both for
commercial as well as for academic use. In the first part of the
book the author introduces a novel hierarchical heuristic scheme
for re-ranking academic publications retrieved from standard
digital libraries. The scheme is based on the hierarchical
combination of a custom implementation of the term frequency
heuristic, a time-depreciated citation score and a graph-theoretic
computed score that relates the paper's index terms with each
other. In order to evaluate the performance of the introduced
algorithms, a meta-search engine has been designed and developed
that submits user queries to standard digital repositories of
academic publications and re-ranks the top-n results using the
introduced hierarchical heuristic scheme. In the second part of the
book the design of novel recommendation algorithms with application
in different types of e-commerce systems are described. The newly
introduced algorithms are a part of a developed Movie
Recommendation system, the first such system to be commercially
deployed in Greece by a major Triple Play services provider. The
initial version of the system uses a novel hybrid recommender
(user, item and content based) and provides daily recommendations
to all active subscribers of the provider (currently more than
30,000). The recommenders that we are presenting are hybrid by
nature, using an ensemble configuration of different content, user
as well as item-based recommenders in order to provide more
accurate recommendation results. The final part of the book
presents the design of a quantitative association rule mining
algorithm. Quantitative association rules refer to a special type
of association rules of the form that antecedent implies consequent
consisting of a set of numerical or quantitative attributes. The
introduced mining algorithm processes a specific number of user
histories in order to generate a set of association rules with a
minimally required support and confidence value. The generated
rules show strong relationships that exist between the consequent
and the antecedent of each rule, representing different items that
have been consumed at specific price levels. This research book
will be of appeal to researchers, graduate students, professionals,
engineers and computer programmers.
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