人机合作中的温情与能力

IF 2 3区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
Kevin R. McKee, Xuechunzi Bai, Susan T. Fiske
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引用次数: 0

摘要

与人类互动和合作是人工智能研究的首要目标。最近的研究表明,经过深度强化学习训练的人工智能代理能够与人类合作。这些研究主要通过任务绩效等 "客观 "指标来评估与人类的兼容性,从而掩盖了不同代理在信任度和主观偏好方面的潜在差异。为了更好地理解人机合作中影响主观偏好的因素,我们在双人社会困境游戏 "硬币 "中训练深度强化学习代理。我们招募了(N = 501)人机合作研究的参与者,并测量了他们对所遇到的代理的印象。参与者对温暖和能力的感知可以预测他们对不同代理的偏好,这一点超越了客观的性能指标。从社会科学和生物学研究中汲取灵感,我们随后实施了一个新的 "伙伴选择 "框架来诱导揭示偏好:在与一个代理玩过一集之后,参与者会被问到他们是愿意与同一个代理玩下一集,还是愿意单独玩。与陈述偏好一样,社会感知比客观表现更能预测参与者的揭示偏好。鉴于这些结果,我们建议人机交互研究人员将社会认知和主观偏好的测量纳入常规研究中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Warmth and competence in human-agent cooperation

Warmth and competence in human-agent cooperation

Interaction and cooperation with humans are overarching aspirations of artificial intelligence research. Recent studies demonstrate that AI agents trained with deep reinforcement learning are capable of collaborating with humans. These studies primarily evaluate human compatibility through “objective” metrics such as task performance, obscuring potential variation in the levels of trust and subjective preference that different agents garner. To better understand the factors shaping subjective preferences in human-agent cooperation, we train deep reinforcement learning agents in Coins, a two-player social dilemma. We recruit \(N = 501\) participants for a human-agent cooperation study and measure their impressions of the agents they encounter. Participants’ perceptions of warmth and competence predict their stated preferences for different agents, above and beyond objective performance metrics. Drawing inspiration from social science and biology research, we subsequently implement a new “partner choice” framework to elicit revealed preferences: after playing an episode with an agent, participants are asked whether they would like to play the next episode with the same agent or to play alone. As with stated preferences, social perception better predicts participants’ revealed preferences than does objective performance. Given these results, we recommend human-agent interaction researchers routinely incorporate the measurement of social perception and subjective preferences into their studies.

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来源期刊
Autonomous Agents and Multi-Agent Systems
Autonomous Agents and Multi-Agent Systems 工程技术-计算机:人工智能
CiteScore
6.00
自引率
5.30%
发文量
48
审稿时长
>12 weeks
期刊介绍: This is the official journal of the International Foundation for Autonomous Agents and Multi-Agent Systems. It provides a leading forum for disseminating significant original research results in the foundations, theory, development, analysis, and applications of autonomous agents and multi-agent systems. Coverage in Autonomous Agents and Multi-Agent Systems includes, but is not limited to: Agent decision-making architectures and their evaluation, including: cognitive models; knowledge representation; logics for agency; ontological reasoning; planning (single and multi-agent); reasoning (single and multi-agent) Cooperation and teamwork, including: distributed problem solving; human-robot/agent interaction; multi-user/multi-virtual-agent interaction; coalition formation; coordination Agent communication languages, including: their semantics, pragmatics, and implementation; agent communication protocols and conversations; agent commitments; speech act theory Ontologies for agent systems, agents and the semantic web, agents and semantic web services, Grid-based systems, and service-oriented computing Agent societies and societal issues, including: artificial social systems; environments, organizations and institutions; ethical and legal issues; privacy, safety and security; trust, reliability and reputation Agent-based system development, including: agent development techniques, tools and environments; agent programming languages; agent specification or validation languages Agent-based simulation, including: emergent behavior; participatory simulation; simulation techniques, tools and environments; social simulation Agreement technologies, including: argumentation; collective decision making; judgment aggregation and belief merging; negotiation; norms Economic paradigms, including: auction and mechanism design; bargaining and negotiation; economically-motivated agents; game theory (cooperative and non-cooperative); social choice and voting Learning agents, including: computational architectures for learning agents; evolution, adaptation; multi-agent learning. Robotic agents, including: integrated perception, cognition, and action; cognitive robotics; robot planning (including action and motion planning); multi-robot systems. Virtual agents, including: agents in games and virtual environments; companion and coaching agents; modeling personality, emotions; multimodal interaction; verbal and non-verbal expressiveness Significant, novel applications of agent technology Comprehensive reviews and authoritative tutorials of research and practice in agent systems Comprehensive and authoritative reviews of books dealing with agents and multi-agent systems.
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