伦理行为推理与学习相结合的多智能体方法

R. Chaput, Jérémy Duval, O. Boissier, Mathieu Guillermin, S. Hassas
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引用次数: 5

摘要

最近的机器伦理学领域正在快速发展,以满足社会对充满伦理考虑的人工智能(AI)算法的需求,例如对人类用户和行为者的仁慈。为了达到这个目的,已经有几种方法存在,主要是通过对一组预定义的道德原则进行推理(自上而下),或者通过学习新的原则(自下而上)。虽然这两种方法都有各自的优点和缺点,但只有少数作品探索了混合方法,例如使用符号规则来指导学习过程,结合每种方法的优点。本文在借鉴已有研究成果的基础上,提出了一种新的混合方法,利用符号判断智能体来评估学习智能体行为的伦理性,从而提高学习智能体在动态多智能体环境中的道德行为能力。判断代理和学习代理之间的分离带来了多种好处:代理可以单独进化(或由人类设计师更新),受益于共同构建过程;判断代理可以作为非专业的人类利益相关者或监管机构的可访问代理;最后,可以采用多个视角(每个判断主体一个)来判断同一主体的行为,从而产生更丰富的反馈。我们提出的方法应用于智能电网模拟器中具有连续和多维状态和动作的能量分配问题。实验和结果表明,学习智能体能够正确地调整自己的行为以遵守判断智能体的规则,包括当规则随着时间的推移而演变时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Agent Approach to Combine Reasoning and Learning for an Ethical Behavior
The recent field of Machine Ethics is experiencing rapid growth to answer the societal need for Artificial Intelligence (AI) algorithms imbued with ethical considerations, such as benevolence toward human users and actors. Several approaches already exist for this purpose, mostly either by reasoning over a set of predefined ethical principles (Top-Down), or by learning new principles (Bottom-Up). While both methods have their own advantages and drawbacks, only few works have explored hybrid approaches, such as using symbolic rules to guide the learning process for instance, combining the advantages of each. This paper draws upon existing works to propose a novel hybrid method using symbolic judging agents to evaluate the ethics of learning agents' behaviors, and accordingly improve their ability to ethically behave in dynamic multi-agent environments. Multiple benefits ensue from this separation between judging and learning agents: agents can evolve (or be updated by human designers) separately, benefiting from co-construction processes; judging agents can act as accessible proxies for non-expert human stakeholders or regulators; and finally, multiple points of view (one per judging agent) can be adopted to judge the behavior of the same agent, which produces a richer feedback. Our proposed approach is applied to an energy distribution problem, in the context of a Smart Grid simulator, with continuous and multi-dimensional states and actions. The experiments and results show the ability of learning agents to correctly adapt their behaviors to comply with the judging agents' rules, including when rules evolve over time.
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