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

Samuel Allen Alexander

2020PhilPapers (PhilPapers Foundation)15 citationsOpen Access PDF

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.

Topics & Concepts

Trap (plumbing)Yield (engineering)Reinforcement learningReinforcementPsychologyComputer scienceMaterials scienceEnvironmental scienceArtificial intelligenceSocial psychologyComposite materialEnvironmental engineeringComputability, Logic, AI AlgorithmsEvolutionary Algorithms and ApplicationsReinforcement Learning in Robotics
The Archimedean trap: Why traditional reinforcement learning will probably not yield AGI | Litcius