Social Learning for Sequential Driving Dilemmas

IF 0.6 Q4 ECONOMICS Games Pub Date : 2023-05-11 DOI:10.3390/g14030041
Xu Chen, Xuan Di, Zechu Li
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Abstract

Autonomous driving (AV) technology has elicited discussion on social dilemmas where trade-offs between individual preferences, social norms, and collective interests may impact road safety and efficiency. In this study, we aim to identify whether social dilemmas exist in AVs’ sequential decision making, which we call “sequential driving dilemmas” (SDDs). Identifying SDDs in traffic scenarios can help policymakers and AV manufacturers better understand under what circumstances SDDs arise and how to design rewards that incentivize AVs to avoid SDDs, ultimately benefiting society as a whole. To achieve this, we leverage a social learning framework, where AVs learn through interactions with random opponents, to analyze their policy learning when facing SDDs. We conduct numerical experiments on two fundamental traffic scenarios: an unsignalized intersection and a highway. We find that SDDs exist for AVs at intersections, but not on highways.
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连续驾驶困境的社会学习
自动驾驶技术引发了关于社会困境的讨论,在这种困境中,个人偏好、社会规范和集体利益之间的权衡可能会影响道路安全和效率。在本研究中,我们旨在确定AV的顺序决策中是否存在社会困境,我们称之为“顺序驾驶困境”(SDD)。在交通场景中识别特殊标准可以帮助决策者和AV制造商更好地了解特殊标准是在什么情况下出现的,以及如何设计奖励来激励AV避免特殊标准,最终使整个社会受益。为了实现这一点,我们利用社会学习框架,即AV通过与随机对手的互动进行学习,来分析他们在面临SDD时的政策学习。我们对两种基本交通场景进行了数值实验:无信号交叉口和高速公路。我们发现,在十字路口存在AV的SDD,但在高速公路上没有。
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来源期刊
Games
Games Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.60
自引率
11.10%
发文量
65
审稿时长
11 weeks
期刊介绍: Games (ISSN 2073-4336) is an international, peer-reviewed, quick-refereeing open access journal (free for readers), which provides an advanced forum for studies related to strategic interaction, game theory and its applications, and decision making. The aim is to provide an interdisciplinary forum for all behavioral sciences and related fields, including economics, psychology, political science, mathematics, computer science, and biology (including animal behavior). To guarantee a rapid refereeing and editorial process, Games follows standard publication practices in the natural sciences.
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