Convergent Policy Optimization for Safe Reinforcement Learning

Volume: 32, Pages: 3121 - 3133
Published: Oct 26, 2019
Abstract
We study the safe reinforcement learning problem with nonlinear function approximation, where policy optimization is formulated as a constrained optimization problem with both the objective and the constraint being nonconvex functions. For such a problem, we construct a sequence of surrogate convex constrained optimization problems by replacing the nonconvex functions locally with convex quadratic functions obtained from policy gradient...
Paper Details
Title
Convergent Policy Optimization for Safe Reinforcement Learning
Published Date
Oct 26, 2019
Volume
32
Pages
3121 - 3133
Citation AnalysisPro
  • Scinapse’s Top 10 Citation Journals & Affiliations graph reveals the quality and authenticity of citations received by a paper.
  • Discover whether citations have been inflated due to self-citations, or if citations include institutional bias.