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A Low-Rank Approximation for MDPs via Moment Coupling
Amy B.Z. Zhang
*
,
Itai Gurvich
*
Corresponding author for this work
Managerial Economics, Decision Sciences and Operations
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Keyphrases
Aggregation Algorithm
33%
Bellman Equation
33%
Central Limit Theorem
100%
Computational Gain
33%
Controlled Markov Chain
33%
Disaggregation
33%
Effective State
33%
First Moment
33%
Local Transitions
33%
Low-rank Approximation
100%
Markov Decision Process
100%
Moment Matching
66%
Opers
33%
Optimality Guarantee
66%
Partial Differential Equations
100%
Second Moment
33%
Soft Aggregation
33%
State Aggregation
33%
State Space
33%
Taylor Expansion
33%
Transition Matrix
33%
Transition Moments
33%
Value Function
33%
Mathematics
Approximates
33%
Bellman Equation
33%
Central Limit Theorem
100%
Function Value
33%
Low-Rank Approximation
100%
Markov Chain
33%
Markov Decision Process
100%
Optimality
66%
Original Chain
33%
PDE
100%
Probability Theory
33%
Taylor Expansion
33%
Transition Matrix
33%