The Linear Programming Approach to Approximate Dynamic Programming
Massachusetts Institute of Technology · Stanford University
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Abstract
The curse of dimensionality gives rise to prohibitive computational requirements that render infeasible the exact solution of large-scale stochastic control problems. We study an efficient method based on linear programming for approximating solutions to such problems. The approach “fits” a linear combination of pre-selected basis functions to the dynamic programming cost-to-go function. We develop error bounds that offer performance guarantees and also guide the selection of both basis functions and “state-relevance weights” that influence quality of the approximation. Experimental results in the domain of queueing network control provide empirical support for the methodology.
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705
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Authors
2Topics & keywords
Topics
Keywords
- Computer science
- Curse of dimensionality
- Mathematical optimization
- Linear programming
- Queueing theory
- Dynamic programming
- Stochastic programming
- Basis (linear algebra)
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