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Particle Value Functions

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arxiv 1703.05820 v1 pith:6DUCH5DH submitted 2017-03-16 cs.LG cs.AI

Particle Value Functions

classification cs.LG cs.AI
keywords valuefunctionparticlerisk-sensitivegradientsillustrateobjectivepolicy
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The policy gradients of the expected return objective can react slowly to rare rewards. Yet, in some cases agents may wish to emphasize the low or high returns regardless of their probability. Borrowing from the economics and control literature, we review the risk-sensitive value function that arises from an exponential utility and illustrate its effects on an example. This risk-sensitive value function is not always applicable to reinforcement learning problems, so we introduce the particle value function defined by a particle filter over the distributions of an agent's experience, which bounds the risk-sensitive one. We illustrate the benefit of the policy gradients of this objective in Cliffworld.

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