Controlled Markov Processes and Viscosity SolutionsThis book is intended as an introduction to optimal stochastic control for continuous time Markov processes and to the theory of viscosity solutions. |
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Results 1-3 of 94
Page 76
... assumptions ( 16.1 ) , ( 16.3 ) , ( 16.4 ) are verified in the special case of LQRP and it is similar to condition I ( 9.2 ) . We postpone the statement of these assumptions to Section 16 ( See Theorem 16.1 . ) Theorem 7.1 . Suppose ...
... assumptions ( 16.1 ) , ( 16.3 ) , ( 16.4 ) are verified in the special case of LQRP and it is similar to condition I ( 9.2 ) . We postpone the statement of these assumptions to Section 16 ( See Theorem 16.1 . ) Theorem 7.1 . Suppose ...
Page 168
... assumptions are made : ( 4.1 ) ( a ) U is compact ; ( b ) O is bounded with 20 a manifold of class C ( 3 ) ; ( c ) for g = a , f , L , the function g and its partial derivatives 9t , 9 , 9 , are continuous on Q × U , i , j = 1 , ... , n ...
... assumptions are made : ( 4.1 ) ( a ) U is compact ; ( b ) O is bounded with 20 a manifold of class C ( 3 ) ; ( c ) for g = a , f , L , the function g and its partial derivatives 9t , 9 , 9 , are continuous on Q × U , i , j = 1 , ... , n ...
Page 398
... assumptions IV ( 6.1 ) . Using the inequality - | f ( t , x , v ) | ≤ | f ( t , 0 , v ) | + | f ( t , x , v ) − f ( t , 0 , v ) | < C2 + C1x , assumption IV ( 6.1c ) implies IV ( 2.2 ) 398 Appendix D. Stochastic Differential Equations.
... assumptions IV ( 6.1 ) . Using the inequality - | f ( t , x , v ) | ≤ | f ( t , 0 , v ) | + | f ( t , x , v ) − f ( t , 0 , v ) | < C2 + C1x , assumption IV ( 6.1c ) implies IV ( 2.2 ) 398 Appendix D. Stochastic Differential Equations.
Contents
Viscosity Solutions | 53 |
Controlled Markov Diffusions in R | 157 |
SecondOrder Case | 213 |
Copyright | |
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Controlled Markov Processes and Viscosity Solutions Wendell H. Fleming,Halil Mete Soner Limited preview - 2006 |
Controlled Markov Processes and Viscosity Solutions Wendell H. Fleming,Halil Mete Soner No preview available - 2006 |
Common terms and phrases
admissible control assume assumptions boundary condition boundary data bounded c₁ C¹(Q calculus of variations Chapter classical solution consider constant convergence convex Corollary cylindrical region D₂V defined definition denote dynamic programming equation dynamic programming principle Dynkin formula Example exists exit finite first-order formulation given Hamilton-Jacobi equation Hence HJB equation holds implies inequality initial condition initial data lateral boundary Lebesgue left endpoint Lemma linear Lipschitz continuous Markov chain Markov control policy Markov processes maximum principle minimizing Moreover nonlinear obtain optimal control optimal control problems partial derivatives partial differential equation proof of Theorem prove R₁ reference probability system result satisfies second-order Section stochastic control stochastic differential equation Suppose t₁ Theorem 5.1 tion unique value function variations problem Verification Theorem viscosity solution viscosity subsolution viscosity supersolution yields