Allen's REINFORCE notes

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Revision as of 21:41, 24 May 2024 by Allen12 (talk | contribs) (Motivation)
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Allen's REINFORCE notes

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Motivation

Recall that the objective of Reinforcement Learning is to find an optimal policy Failed to parse (unknown function "\math"): {\displaystyle \pi^*<\math> which we encode in a neural network with parameters <math>\theta^*<\math>. These optimal parameters are defined as <math>\theta^* = \text<argmax>_\theta E_{\tau \sim p_\theta(\tau)} \left[ \sum_t r(s_t, a_t) \right] <\math> === Learning === Learning involves the agent taking actions and the environment returning a new state and reward. * Input: <math>s_t} : States at each time step

  • Output: : Actions at each time step
  • Data:
  • Learn to maximize

State vs. Observation