We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial conditional MKV, and extending the known class of linear quadratic stochastic MKV control problems. We show how this polynomial class can be reduced by suitable Markov embedding to finite-dimensional stochastic control problems, and provide a discussion and comparison of three probabilistic numerical methods for solving the reduced control problem: quantization, regression by control randomization, and regress-later methods. Our numerical results are illustrated on various examples from portfolio selection and liquidation under drift uncertainty, and a model of interbank systemic risk with partial observation
41 pages, to appear in Transactions of the American Mathematical SocietyWe analyze a stochastic opti...
Abstract We propose a probabilistic numerical method based on optimal quantization to solve some mul...
41 pages, to appear in Transactions of the American Mathematical SocietyWe analyze a stochastic opti...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
to appear in Probability, Uncertainty and Quantitative RiskWe consider the optimal control problem f...
to appear in Probability, Uncertainty and Quantitative RiskWe consider the optimal control problem f...
to appear in Probability, Uncertainty and Quantitative RiskWe consider the optimal control problem f...
We propose a simple and original approach for solving linear-quadratic mean-field stochastic contro...
This Ph.D. thesis deals with the numerical solution of two types of stochastic problems. First, we i...
We analyze a stochastic optimal control problem, where the state process follows a McKean-Vlasov dyn...
41 pages, to appear in Transactions of the American Mathematical SocietyWe analyze a stochastic opti...
Abstract We propose a probabilistic numerical method based on optimal quantization to solve some mul...
41 pages, to appear in Transactions of the American Mathematical SocietyWe analyze a stochastic opti...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
to appear in Probability, Uncertainty and Quantitative RiskWe consider the optimal control problem f...
to appear in Probability, Uncertainty and Quantitative RiskWe consider the optimal control problem f...
to appear in Probability, Uncertainty and Quantitative RiskWe consider the optimal control problem f...
We propose a simple and original approach for solving linear-quadratic mean-field stochastic contro...
This Ph.D. thesis deals with the numerical solution of two types of stochastic problems. First, we i...
We analyze a stochastic optimal control problem, where the state process follows a McKean-Vlasov dyn...
41 pages, to appear in Transactions of the American Mathematical SocietyWe analyze a stochastic opti...
Abstract We propose a probabilistic numerical method based on optimal quantization to solve some mul...
41 pages, to appear in Transactions of the American Mathematical SocietyWe analyze a stochastic opti...