âIntelligence and Unambitiousness Using Algorithmic Information Theoryâ, 2021-05-13 (; similar)â :
Algorithmic Information Theory has inspired intractable constructions of general intelligence (AGI), and undiscovered tractable approximations are likely feasible. Reinforcement Learning (RL), the dominant paradigm by which an agent might learn to solve arbitrary solvable problems, gives an agent a dangerous incentive: to gain arbitrary âpowerâ in order to intervene in the provision of their own reward. We review the arguments that generally intelligent algorithmic-information-theoretic reinforcement learners such as Hutterâs (200519ya) AIXI would seek arbitrary power, including over us.
Then, using an information-theoretic exploration schedule, and a setup inspired by causal influence theory, we present a variant of AIXI which learns to not seek arbitrary power; we call it âunambitiousâ. We show that our agent learns to accrue reward at least as well as a human mentor, while relying on that mentor with diminishing probability.
And given a formal assumption that we probe empirically, we show that eventually, the agentâs world-model incorporates the following true fact: intervening in the âoutside worldâ will have no effect on reward acquisition; hence, it has no incentive to shape the outside world.