Conservative Agency via Attainable Utility Preservation

A. Turner, Dylan Hadfield-Menell, Prasad Tadepalli
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引用次数: 37

Abstract

Reward functions are easy to misspecify; although designers can make corrections after observing mistakes, an agent pursuing a misspecified reward function can irreversibly change the state of its environment. If that change precludes optimization of the correctly specified reward function, then correction is futile. For example, a robotic factory assistant could break expensive equipment due to a reward misspecification; even if the designers immediately correct the reward function, the damage is done. To mitigate this risk, we introduce an approach that balances optimization of the primary reward function with preservation of the ability to optimize auxiliary reward functions. Surprisingly, even when the auxiliary reward functions are randomly generated and therefore uninformative about the correctly specified reward function, this approach induces conservative, effective behavior.
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通过可实现的效用保存的保守机构
奖励功能很容易被误解;尽管设计师可以在观察到错误后进行纠正,但追求错误奖励功能的代理可以不可逆转地改变其环境状态。如果这种改变妨碍了正确指定的奖励功能的优化,那么纠正就是徒劳的。例如,机器人工厂助理可能会因为奖励错误而损坏昂贵的设备;即使设计师立即修正奖励功能,损害也已经造成。为了降低这种风险,我们引入了一种平衡主要奖励函数的优化与保留优化辅助奖励函数的能力的方法。令人惊讶的是,即使辅助奖励函数是随机生成的,因此对正确指定的奖励函数没有信息,这种方法也会导致保守、有效的行为。
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