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arxiv: 2001.00528 · v2 · pith:PQFOBDPR · submitted 2020-01-02 · cs.LG · stat.ML

Non-Parametric Learning of Gaifman Models

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classification cs.LG stat.ML
keywords gaifmanrelationalfeatureslearningfeaturemodelmodelsrepresentations
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We consider the problem of structure learning for Gaifman models and learn relational features that can be used to derive feature representations from a knowledge base. These relational features are first-order rules that are then partially grounded and counted over local neighborhoods of a Gaifman model to obtain the feature representations. We propose a method for learning these relational features for a Gaifman model by using relational tree distances. Our empirical evaluation on real data sets demonstrates the superiority of our approach over classical rule-learning.

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