HCCLLGApr 17, 2024

Advancing Social Intelligence in AI Agents: Technical Challenges and Open Questions

arXiv:2404.11023v239 citationsh-index: 88EMNLP
Originality Synthesis-oriented
AI Analysis

It addresses the problem of building AI with social intelligence for researchers, but is incremental as it synthesizes existing knowledge without new results.

This position paper identifies technical challenges and open questions for advancing socially-intelligent AI agents, focusing on multidisciplinary research across computing communities.

Building socially-intelligent AI agents (Social-AI) is a multidisciplinary, multimodal research goal that involves creating agents that can sense, perceive, reason about, learn from, and respond to affect, behavior, and cognition of other agents (human or artificial). Progress towards Social-AI has accelerated in the past decade across several computing communities, including natural language processing, machine learning, robotics, human-machine interaction, computer vision, and speech. Natural language processing, in particular, has been prominent in Social-AI research, as language plays a key role in constructing the social world. In this position paper, we identify a set of underlying technical challenges and open questions for researchers across computing communities to advance Social-AI. We anchor our discussion in the context of social intelligence concepts and prior progress in Social-AI research.

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