Let Me Finish First – The Effect of Interruption-Handling Strategy on the Perceived Personality of a Social Agent
This paper presents an experiment with three artificial agents adopting different strategies when being interrupted by human conversational partners. The agent either ignored the interruption (the most common behavior in conversational engines to date), yielded the turn to the human conversational partner right away, or acknowledged the interruption, finished its thought and then responded to the content of the interruption. Our results show that this change in the agent's conversational behavior had a significant impact on which personality traits people assigned to the agent, as well as how much they enjoyed interacting with it. Moreover, the data also indicates that human interlocutors adapted their own conversational behavior. Our findings suggest that the interactive behavior of an artificial agent should be carefully designed to match its desired personality and the intended conversational dynamics.
Soft Pneumatic Actuator Design using Differentiable Simulation
Interactive Design of Stylized Walking Gaits for Robotic Characters
David Muelller
Erika Varis Doggett
Name Pronunciation Extraction and Reuse in Human-Agent Conversation
We present a pipeline for fusing text and audio features to extract and re-use user information like names with the correct pronunciation.
Improving a Robot’s Turn-Taking Behavior in Dynamic Multiparty Interactions
We present ongoing work to develop a robust and natural turn-taking behavior for a social agent to engage a dynamically changing group in a conversation.
Reshma Kantharaju
Evan Harber
Isaac Tunney
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