Any randomized strategy in N-trader optimal execution games can be strictly improved by its non-randomized average, so equilibria must be pure and are unique when the impact kernel is strictly positive definite and trading costs are convex.
Mean Field Games with Partial Information for Algorithmic Trading
2 Pith papers cite this work. Polarity classification is still indexing.
abstract
Financial markets are often driven by latent factors which traders cannot observe. Here, we address an algorithmic trading problem with collections of heterogeneous agents who aim to perform optimal execution or statistical arbitrage, where all agents filter the latent states of the world, and their trading actions have permanent and temporary price impact. This leads to a large stochastic game with heterogeneous agents. We solve the stochastic game by investigating its mean-field game (MFG) limit, with sub-populations of heterogeneous agents, and, using a convex analysis approach, we show that the solution is characterized by a vector-valued forward-backward stochastic differential equation (FBSDE). We demonstrate that the FBSDE admits a unique solution, obtain it in closed-form, and characterize the optimal behaviour of the agents in the MFG equilibrium. Moreover, we prove the MFG equilibrium provides an $\epsilon$-Nash equilibrium for the finite player game. We conclude by illustrating the behaviour of agents using the optimal MFG strategy through simulated examples.
fields
q-fin.TR 2years
2025 2verdicts
UNVERDICTED 2representative citing papers
In the Obizhaeva-Wang transient-impact model, N-player execution games admit unique closed-form equilibria under instantaneous-cost regularization; equilibrium is restored exactly by a derived time-dependent block-trade cost that is the limit of regularized equilibria and does not vanish as the cost
citing papers explorer
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Randomization in Optimal Execution Games
Any randomized strategy in N-trader optimal execution games can be strictly improved by its non-randomized average, so equilibria must be pure and are unique when the impact kernel is strictly positive definite and trading costs are convex.
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Optimal Execution among $N$ Traders with Transient Price Impact
In the Obizhaeva-Wang transient-impact model, N-player execution games admit unique closed-form equilibria under instantaneous-cost regularization; equilibrium is restored exactly by a derived time-dependent block-trade cost that is the limit of regularized equilibria and does not vanish as the cost