Causality Prediction with Neural-Symbolic Systems: A Case Study in Smart Grids

Katrin Schreiberhuber*, Marta Sabou, Fajar J. Ekaputra, Peter Knees, Peb Ruswono Aryan, Alfred Einfalt, Ralf Mosshammer

*Korrespondierende*r Autor*in für diese Arbeit

Publikation: Beitrag in Buch/KonferenzbandBeitrag in Konferenzband

Abstract

In complex systems, such as smart grids, explanations of system events benefit both system operators and users. Deriving causality knowledge as a basis for explanations has been addressed with rule-based, symbolic AI systems. However, these systems are limited in their scope to discovering causalities that can be inferred by their rule base. To address this gap, we propose a neural-symbolic architecture that augments symbolic approaches with sub-symbolic components, in order to broaden the scope of the identified causalities. Concretely, we use Knowledge Graph Embeddings (KGE) to solve causality knowledge derivation as a link prediction problem. Experimental results show that the neural-symbolic approach can predict causality knowledge with a good performance and has the potential to predict causalities that were not present in the symbolic system, thus broadening the causality knowledge scope of symbolic approaches.
OriginalspracheEnglisch
Titel des Sammelwerks NeSy 2023 Neural-Symbolic Learning and Reasoning 2023
Untertitel des SammelwerksProceedings of the 17th International Workshop on Neural-Symbolic Learning and Reasoning
Herausgeber*innenArtur S. d'Avila Garcez, Tarek R. Besold, Marco Gori, Ernesto Jiménez-Ruiz
VerlagCEUR Workshop Proceedings
Seiten336-347
Seitenumfang12
PublikationsstatusVeröffentlicht - 2023

Publikationsreihe

ReiheCEUR Workshop Proceedings
Nummer3432
ISSN1613-0073

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