Ranking relations using analogies in biological and information networks
Ricardo Silva, Katherine Heller, Zoubin Ghahramani, Edoardo M. Airoldi

TL;DR
This paper introduces a Bayesian-based method for ranking relational analogies in biological and information networks, enabling the identification of similar object pairs based on learned relational patterns.
Contribution
It presents a novel approach combining similarity measures and Bayesian analysis for relational learning without requiring explicit relationship attributes.
Findings
Effective in text analysis and information networks
Works with small sets of known pairs
Applicable to discovering protein interactions
Abstract
Analogical reasoning depends fundamentally on the ability to learn and generalize about relations between objects. We develop an approach to relational learning which, given a set of pairs of objects , measures how well other pairs A:B fit in with the set . Our work addresses the following question: is the relation between objects A and B analogous to those relations found in ? Such questions are particularly relevant in information retrieval, where an investigator might want to search for analogous pairs of objects that match the query set of interest. There are many ways in which objects can be related, making the task of measuring analogies very challenging. Our approach combines a similarity measure on function spaces with Bayesian analysis to produce a ranking. It requires data…
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