The Archimedean trap: Why traditional reinforcement learning will probably not yield AGI

S. Alexander
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引用次数: 9

Abstract

Abstract After generalizing the Archimedean property of real numbers in such a way as to make it adaptable to non-numeric structures, we demonstrate that the real numbers cannot be used to accurately measure non-Archimedean structures. We argue that, since an agent with Artificial General Intelligence (AGI) should have no problem engaging in tasks that inherently involve non-Archimedean rewards, and since traditional reinforcement learning rewards are real numbers, therefore traditional reinforcement learning probably will not lead to AGI. We indicate two possible ways traditional reinforcement learning could be altered to remove this roadblock.
阿基米德陷阱:为什么传统的强化学习可能不会产生AGI
摘要将实数的阿基米德性质推广到适用于非数值结构,证明了实数不能用于精确测量非阿基米德结构。我们认为,由于具有人工通用智能(AGI)的智能体在从事本质上涉及非阿基米德奖励的任务时应该没有问题,并且由于传统的强化学习奖励是实数,因此传统的强化学习可能不会导致AGI。我们指出了两种可能的方法来改变传统的强化学习来消除这个障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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