Self-modification of policy and utility function in rational agents
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Everitt, Tom
Filan, Daniel
Daswani, Mayank
Hutter, Marcus
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Springer Verlag (Germany)
Abstract
Any agent that is part of the environment it interacts with
and has versatile actuators (such as arms and fingers), will in principle
have the ability to self-modify – for example by changing its own source
code. As we continue to create more and more intelligent agents, chances
increase that they will learn about this ability. The question is: will they
want to use it? For example, highly intelligent systems may find ways to
change their goals to something more easily achievable, thereby ‘escaping’
the control of their creators. In an important paper, Omohundro (2008)
argued that goal preservation is a fundamental drive of any intelligent
system, since a goal is more likely to be achieved if future versions of
the agent strive towards the same goal. In this paper, we formalise this
argument in general reinforcement learning, and explore situations where
it fails. Our conclusion is that the self-modification possibility is harmless
if and only if the value function of the agent anticipates the consequences
of self-modifications and use the current utility function when evaluating
the future.
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Lecture Notes in Computer Science
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Open Access