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Conversational AI for multi-agent communication in Natural Language

Oliver Lemon

2022AI Communications12 citationsDOIOpen Access PDF

Abstract

Research at the Interaction Lab focuses on human-agent communication using conversational Natural Language. The ultimate goal is to create systems where humans and AI agents (including embodied robots) can spontaneously form teams and coordinate shared tasks through the use of Natural Language conversation as a universal communication interface. This paper first introduces machine learning approaches to problems in conversational AI in general, where computational agents must coordinate with humans to solve tasks using conversational Natural Language. It also covers some of the practical systems developed in the Interaction Lab, ranging from speech interfaces on smart speakers to embodied robots interacting using visually grounded language. In several cases communication between multiple agents is addressed. The paper surveys the central research problems addressed here, the approaches developed, and our main results. Some key open research questions and directions are then discussed, leading towards a future vision of conversational, collaborative multi-agent systems.

Topics & Concepts

Computer scienceConversationEmbodied cognitionHuman–computer interactionNatural languageDialog systemInterface (matter)Embodied agentRobotNatural (archaeology)Natural language understandingIntelligent agentArtificial intelligenceNatural language user interfaceLanguage understandingWorld Wide WebDialog boxCommunicationParallel computingArchaeologySociologyMaximum bubble pressure methodBubbleHistorySpeech and dialogue systemsNatural Language Processing TechniquesTopic Modeling
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