An energy-based model for neuro-symbolic reasoning on knowledge graphs
- URL: http://arxiv.org/abs/2110.01639v1
- Date: Mon, 4 Oct 2021 18:02:36 GMT
- Title: An energy-based model for neuro-symbolic reasoning on knowledge graphs
- Authors: Dominik Dold, Josep Soler Garrido
- Abstract summary: We propose an energy-based graph embedding algorithm to characterize industrial automation systems.
By combining knowledge from multiple domains, the learned model is capable of making context-aware predictions.
The presented model is mappable to a biologically-inspired neural architecture, serving as a first bridge between graph embedding methods and neuromorphic computing.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Machine learning on graph-structured data has recently become a major topic
in industry and research, finding many exciting applications such as
recommender systems and automated theorem proving. We propose an energy-based
graph embedding algorithm to characterize industrial automation systems,
integrating knowledge from different domains like industrial automation,
communications and cybersecurity. By combining knowledge from multiple domains,
the learned model is capable of making context-aware predictions regarding
novel system events and can be used to evaluate the severity of anomalies that
might be indicative of, e.g., cybersecurity breaches. The presented model is
mappable to a biologically-inspired neural architecture, serving as a first
bridge between graph embedding methods and neuromorphic computing - uncovering
a promising edge application for this upcoming technology.
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