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Discriminative Gaifman Models

About

We present discriminative Gaifman models, a novel family of relational machine learning models. Gaifman models learn feature representations bottom up from representations of locally connected and bounded-size regions of knowledge bases (KBs). Considering local and bounded-size neighborhoods of knowledge bases renders logical inference and learning tractable, mitigates the problem of overfitting, and facilitates weight sharing. Gaifman models sample neighborhoods of knowledge bases so as to make the learned relational models more robust to missing objects and relations which is a common situation in open-world KBs. We present the core ideas of Gaifman models and apply them to large-scale relational learning problems. We also discuss the ways in which Gaifman models relate to some existing relational machine learning approaches.

Mathias Niepert• 2016

Related benchmarks

TaskDatasetResultRank
Link PredictionFB15K (test)
Hits@100.842
164
Link PredictionWN18 (test)
Hits@100.939
142
Link PredictionWN18--
77
Entity PredictionFB15k v1 (test)
Mean Rank75
11
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