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Paper

Sample Complexity of Policy Gradient for Log-Growth Control

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arXiv:2605. 26640v1 Announce Type: cross Abstract: We study the sample complexity of policy gradient for log-growth control -- the problem of learning, from observed state transitions, a feedback gain that optimally stabilizes a scalar linear system driven through a multiplicative-noise actuation channel.