KBLRN End-to-End Learning of Knowledge Base Representations with Latent, Relational, and Numerical Features

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Authors Alberto Garcia-Duran, Mathias Niepert
Journal/Conference Name 34th Conference on Uncertainty in Artificial Intelligence 2018, UAI 2018
Paper Category
Paper Abstract We present KBLRN, a framework for end-to-end learning of knowledge base representations from latent, relational, and numerical features. KBLRN integrates feature types with a novel combination of neural representation learning and probabilistic product of experts models. To the best of our knowledge, KBLRN is the first approach that learns representations of knowledge bases by integrating latent, relational, and numerical features. We show that instances of KBLRN outperform existing methods on a range of knowledge base completion tasks. We contribute a novel data sets enriching commonly used knowledge base completion benchmarks with numerical features. The data sets are available under a permissive BSD-3 license. We also investigate the impact numerical features have on the KB completion performance of KBLRN.
Date of publication 2017
Code Programming Language Python

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