Model-based Utility Functions

B. Hibbard
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引用次数: 48

Abstract

Abstract Orseau and Ring, as well as Dewey, have recently described problems, including self-delusion, with the behavior of agents using various definitions of utility functions. An agent's utility function is defined in terms of the agent's history of interactions with its environment. This paper argues, via two examples, that the behavior problems can be avoided by formulating the utility function in two steps: 1) inferring a model of the environment from interactions, and 2) computing utility as a function of the environment model. Basing a utility function on a model that the agent must learn implies that the utility function must initially be expressed in terms of specifications to be matched to structures in the learned model. These specifications constitute prior assumptions about the environment so this approach will not work with arbitrary environments. But the approach should work for agents designed by humans to act in the physical world. The paper also addresses the issue of self-modifying agents and shows that if provided with the possibility to modify their utility functions agents will not choose to do so, under some usual assumptions.
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基于模型的实用函数
Orseau和Ring以及Dewey最近用各种效用函数的定义描述了包括自我欺骗在内的代理行为问题。智能体的效用函数是根据智能体与其环境的交互历史来定义的。本文通过两个例子论证,行为问题可以通过分两步制定效用函数来避免:1)从相互作用中推断环境模型,2)计算效用作为环境模型的函数。基于智能体必须学习的模型的效用函数意味着效用函数最初必须用与学习模型中的结构相匹配的规范来表示。这些规范构成了对环境的预先假设,因此此方法不适用于任意环境。但这种方法应该适用于人类设计的在物理世界中行动的代理。本文还讨论了自我修改代理的问题,并表明如果提供了修改其效用函数的可能性,代理将不会选择这样做,在一些通常的假设下。
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