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Knowledge acquisition for dialogue agents using reinforcement learning on graph representations

Authors :
Santamaria, Selene Baez
Wang, Shihan
Vossen, Piek
Publication Year :
2024

Abstract

We develop an artificial agent motivated to augment its knowledge base beyond its initial training. The agent actively participates in dialogues with other agents, strategically acquiring new information. The agent models its knowledge as an RDF knowledge graph, integrating new beliefs acquired through conversation. Responses in dialogue are generated by identifying graph patterns around these new integrated beliefs. We show that policies can be learned using reinforcement learning to select effective graph patterns during an interaction, without relying on explicit user feedback. Within this context, our study is a proof of concept for leveraging users as effective sources of information.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.19500
Document Type :
Working Paper