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Variance reduced policy evaluation with smooth function approximation
Hoi To Wai
,
Mingyi Hong
, Zhuoran Yang
, Zhaoran Wang
, Kexin Tang
Electrical and Computer Engineering
Research output
:
Contribution to journal
›
Conference article
›
peer-review
36
Scopus citations
Overview
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Keyphrases
Policy Evaluation
100%
Smooth Function
100%
Function Approximation
100%
Nonconvex
66%
Neural Network
33%
Optimization Problem
33%
Reinforcement Learning
33%
Stationary Point
33%
Convergence Rate
33%
State Action
33%
Primal-dual
33%
Oracle
33%
Traditional Algorithm
33%
Gradient Method
33%
Approximation Function
33%
Variance Reduction
33%
Evaluation Challenges
33%
Non-dual
33%
Linear Function Approximation
33%
Primal-dual Gradient
33%
Two-timescale Stochastic Approximation
33%
Nonlinear Function Approximation
33%
Finite-sum Optimization
33%
Mathematics
Variance
100%
Smooth Function
100%
Subproblem
100%
Stationary Point
50%
Linear Function
50%
Variance Reduction
50%
Approximation of Function
50%
Finite Sum
50%
Stochastics
50%
Convergence Rate
50%
Nonlinear Function
50%
Neural Network
50%