Article ID Journal Published Year Pages File Type
376932 Artificial Intelligence 2013 26 Pages PDF
Abstract

Type Extension Trees are a powerful representation language for “count-of-count” features characterizing the combinatorial structure of neighborhoods of entities in relational domains. In this paper we present a learning algorithm for Type Extension Trees (TET) that discovers informative count-of-count features in the supervised learning setting. Experiments on bibliographic data show that TET-learning is able to discover the count-of-count feature underlying the definition of the h-index, and the inverse document frequency feature commonly used in information retrieval. We also introduce a metric on TET feature values. This metric is defined as a recursive application of the Wasserstein–Kantorovich metric. Experiments with a k-NN classifier show that exploiting the recursive count-of-count statistics encoded in TET values improves classification accuracy over alternative methods based on simple count statistics.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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