Neural models of Knowledge Base data have typically employed compositional representations of graph objects: entity and relation embeddings are systematically combined to evaluate the truth of a candidate Knowedge Base entry. Using a model inspired by Harmonic Grammar, we propose to tokenize triplet embeddings by subjecting them to a process of optimization with respect to learned well-formedness conditions on Knowledge Base triplets. The resulting model, known as Gradient Graphs, leads to sizable improvements when implemented as a companion to compositional models. Also, we show that the "supracompositional" triplet token embeddings it produces have interpretable properties that prove helpful in performing inference on the resulting triplet representations.
@article{arxiv.1811.01062,
title = {Augmenting Compositional Models for Knowledge Base Completion Using Gradient Representations},
author = {Matthias Lalisse and Paul Smolensky},
journal= {arXiv preprint arXiv:1811.01062},
year = {2019}
}
Comments
10 pages, 2 figures, To appear in proceedings of the Society for Computation in Linguistics (SCIL 2019)