Toward Natural and Companionable Virtual Agents via Cross-Temporal Emotional Modeling

要旨

Recent advances in foundation models have enabled conversational agents that aim for sustained companionship rather than mere task completion. Yet most still remain unable to support natural, long-term companion-like interactions, resulting in experiences that feel episodic and inauthentic. We argue that current agents overlooked cross-temporal modeling of agents’ social behaviors and internal emotions: generated behaviors rarely influence an agent’s emotional state, and emotional states seldom shape subsequent behaviors. We present Cross-Temporal Emotion Modeling (CTEM), a framework that links long-term behavioral history to moment-to-moment emotional expression. CTEM establishes a closed loop where past experiences update an evolving emotional state; this state conditions immediate interactions; and user feedback continually revises both memory and emotional state, enabling reflection and anticipation. We instantiate CTEM as \textit{Auri}, a companion agent on an instant-messaging platform, and report a 21-day in-the-wild study showing that CTEM shows improvements in perceived naturalness, coherence, and emotional harmony.

著者
Yi Zheng
Communication University of China, BeiJing, China
Feier Qin
Communication University of China, BeiJing, China
Xiao Li
Microsoft Research Asia, Beijing, China
Haibin Huang
Institute of Artificial Intelligence, China Telecom, BeiJing, China
Hanyao Wang
Communication University of China, beijing, China
Xiaoyu Wang
Communication University of China,Beijing, Beijing, China
Yan Lu
Microsoft Research Asia, Beijing, China
Yuan Zhang
Communication University of China, Beijing, China

会議: CHI 2026

ACM CHI Conference on Human Factors in Computing Systems

セッション: AI Personality

P1 - Room 121
7 件の発表
2026-04-13 20:15:00
2026-04-13 21:45:00