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Reinforcement Learning and Stochastic Optimization
book

Reinforcement Learning and Stochastic Optimization

by Warren B. Powell
March 2022
Intermediate to advanced
1136 pages
29h 55m
English
Wiley
Content preview from Reinforcement Learning and Stochastic Optimization

Index

  • a
  • Active learning, 61
  • Actor-critic algorithm, 907
  • Ad-clicks, 459
  • Adaptive learning algorithms, 202
    • as sequential decision, 202
    • designing policies, 209
    • learning problems, 202
  • Affine function, 747
  • Aggregation, modeling, 125
  • Aleatoric uncertainty, 564
  • Algorithm
    • approximate value iteration linear model, 886
    • Benders for two-stage, 951
    • indifference zone selection, 383
    • optimal computing budget allocation, 383
    • temporal-difference learning infinite horizon, 833
    • actor-critic, 907
    • ADP with pre-decision state, 872
    • approximate policy iteration, 901, 907
    • linear model, 903
    • LSTD, 905
  • backward ADP
    • lookup tables, 800
    • parametric model, 800
    • backward dynamic programming, 749
    • bias-adjusted Kalman filter stepsize, 297
    • direct lookahead policy simulator, 994
    • double-pass ADP, 876
    • Gauss-Seidel variation, 758
    • hybrid value/policy iteration, 764
    • least squares temporal differencing, 905
    • MCTS algorithm
      • backup step, 1014
      • roll-out policy, 1011
      • simulation step, 1012
      • tree policy, 1012
    • policy evaluation, 825
    • policy iteration, 763
    • Q-learning
    • relative value iteration, 758
    • shortest path algorithm, 76
    • value iteration, 757
  • American option, 894
  • Anytime problems, 41
  • Apparent convergence, 300
  • Applications
  • American option, 55, 894
  • asset selling, 54, 662
  • asset valuation, 437
  • bidding, 992
  • blood management, 450, 715, 927, 1070
  • blood sugar, 662
  • budgeting problem, 752
  • building management, 1067
  • business, 5
  • carbon monoxide, 567
  • cash management, ...
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Publisher Resources

ISBN: 9781119815037Purchase Link