Auto-encoding a Knowledge Graph Using a Deep Belief Network: A Random Fields Perspective

11/14/2019
by   Robert A. Murphy, et al.
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We started with a knowledge graph of connected entities and descriptive properties of those entities, from which, a hierarchical representation of the knowledge graph is derived. Using a graphical, energy-based neural network, we are able to show that the structure of the hierarchy can be internally captured by the neural network, which allows for efficient output of the underlying equilibrium distribution from which the data are drawn.

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