Algorithms for Academic Search and Recommendation Systems

Emmanouil Amolochitis

Publikation: Ph.d.-afhandling

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Abstract

In this work we present novel algorithms for academic search, recommendation and association rules mining. In the first part of the work we introduce a novel hierarchical heuristic scheme for re-ranking academic publications. 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. On the second part we describe the design of hybrid recommender ensemble (user, item and content based). The newly introduced algorithms are part of a developed Movie Recommendation system, the first such system to be commercially deployed in Greece by a major Triple Play services provider. In the third part of the work we present the design of a quantitative association rule mining algorithm. 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. We have introduced a post processor that uses the generated association rules and improves the quality (in terms of recall) of the original recommendation functionality.
OriginalsprogEngelsk
StatusUdgivet - 2014

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