Holographic Embeddings of Knowledge Graphs

Massachusetts Institute of Technology

Indexed inarxivcrossrefdatacite

Abstract

Learning embeddings of entities and relations is an efficient and versatile method to perform machine learning on relational data such as knowledge graphs. In this work, we propose holographic embeddings (HolE) to learn compositional vector space representations of entire knowledge graphs. The proposed method is related to holographic models of associative memory in that it employs circular correlation to create compositional representations. By using correlation as the compositional operator, HolE can capture rich interactions but simultaneously remains efficient to compute, easy to train, and scalable to very large datasets. Experimentally, we show that holographic embeddings are able to outperform…

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616
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FWCI
82.13
Percentile
100%
References
45
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Authors

3

Topics & keywords

Keywords
  • Computer science
  • Scalability
  • Benchmark (surveying)
  • Statistical relational learning
  • Holography
  • Theoretical computer science
  • Knowledge graph
  • Vector space
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