Performance of Bounded-Rational Agents With the Ability to Self-Modify
November 12, 2020 Β· Declared Dead Β· π SafeAI@AAAI
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Authors
Jakub TΔtek, Marek Sklenka, TomΓ‘Ε‘ GavenΔiak
arXiv ID
2011.06275
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CY
Citations
2
Venue
SafeAI@AAAI
Last Checked
4 months ago
Abstract
Self-modification of agents embedded in complex environments is hard to avoid, whether it happens via direct means (e.g. own code modification) or indirectly (e.g. influencing the operator, exploiting bugs or the environment). It has been argued that intelligent agents have an incentive to avoid modifying their utility function so that their future instances work towards the same goals. Everitt et al. (2016) formally show that providing an option to self-modify is harmless for perfectly rational agents. We show that this result is no longer true for agents with bounded rationality. In such agents, self-modification may cause exponential deterioration in performance and gradual misalignment of a previously aligned agent. We investigate how the size of this effect depends on the type and magnitude of imperfections in the agent's rationality (1-4 below). We also discuss model assumptions and the wider problem and framing space. We examine four ways in which an agent can be bounded-rational: it either (1) doesn't always choose the optimal action, (2) is not perfectly aligned with human values, (3) has an inaccurate model of the environment, or (4) uses the wrong temporal discounting factor. We show that while in the cases (2)-(4) the misalignment caused by the agent's imperfection does not increase over time, with (1) the misalignment may grow exponentially.
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