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Mayank Daswani and Jan Leike A definition of happiness for reinforcement learning agents article What is happiness for reinforcement learning agents? We seek a formal definition satisfying a list of desiderata. Our proposed definition of happiness is the temporal difference error, i.e. the difference between the value of the obtained reward and observation and the agent’s expectation of this value. This definition satisfies most of our desiderata and is compatible with empirical research on humans. We state several implications and discuss examples.

A definition of happiness for reinforcement learning agents

Mayank Daswani and Jan Leike

A definition of happiness for reinforcement learning agents, no. arXiv:1505.04497 [cs], 2015

Abstract

What is happiness for reinforcement learning agents? We seek a formal definition satisfying a list of desiderata. Our proposed definition of happiness is the temporal difference error, i.e. the difference between the value of the obtained reward and observation and the agent’s expectation of this value. This definition satisfies most of our desiderata and is compatible with empirical research on humans. We state several implications and discuss examples.

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