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Response Quality in Human-Chatbot Collaborative Systems

Jiepu Jiang, Naman Ahuja

202044 citationsDOIOpen Access PDF

Abstract

We report the results of a crowdsourcing user study for evaluating the effectiveness of human-chatbot collaborative conversation systems, which aim to extend the ability of a human user to answer another person's requests in a conversation using a chatbot. We examine the quality of responses from two collaborative systems and compare them with human-only and chatbot-only settings. Our two systems both allow users to formulate responses based on a chatbot's top-ranked results as suggestions. But they encourage the synthesis of human and AI outputs to a different extent. Experimental results show that both systems significantly improved the informativeness of messages and reduced user effort compared with a human-only baseline while sacrificing the fluency and humanlikeness of the responses. Compared with a chatbot-only baseline, the collaborative systems provided comparably informative but more fluent and human-like messages.

Topics & Concepts

ChatbotCrowdsourcingConversationComputer scienceBaseline (sea)FluencyHuman–computer interactionQuality (philosophy)Dialog systemWorld Wide WebPsychologyDialog boxGeologyMathematics educationOceanographyPhilosophyEpistemologyCommunicationMobile Crowdsensing and CrowdsourcingAI in Service InteractionsArtificial Intelligence in Healthcare and Education
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