• Corpus ID: 118416543

Random Dynamical Systems: Theory and Applications

  title={Random Dynamical Systems: Theory and Applications},
  author={Rabi N. Bhattacharya and Mukul Majumdar},
1. Dynamical systems 2. Markov processes 3. Random dynamical systems 4. Random dynamical systems: special structures 5. Invariant distributions: estimations and computation 6. Discounted dynamic programming under uncertainty 7. Appendix. 
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