Towards Multi-Agent Reinforcement Learning driven Over-The-Counter Market Simulations
We study a game between liquidity provider and liquidity taker agents interacting in an over-the-counter market, for which the typical example is foreign exchange. We show how a suitable design of parameterized families of reward functions coupled with shared policy learning constitutes an efficient...
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Main Authors | , , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
13.10.2022
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Subjects | |
Online Access | Get full text |
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Summary: | We study a game between liquidity provider and liquidity taker agents
interacting in an over-the-counter market, for which the typical example is
foreign exchange. We show how a suitable design of parameterized families of
reward functions coupled with shared policy learning constitutes an efficient
solution to this problem. By playing against each other, our
deep-reinforcement-learning-driven agents learn emergent behaviors relative to
a wide spectrum of objectives encompassing profit-and-loss, optimal execution
and market share. In particular, we find that liquidity providers naturally
learn to balance hedging and skewing, where skewing refers to setting their buy
and sell prices asymmetrically as a function of their inventory. We further
introduce a novel RL-based calibration algorithm which we found performed well
at imposing constraints on the game equilibrium. On the theoretical side, we
are able to show convergence rates for our multi-agent policy gradient
algorithm under a transitivity assumption, closely related to generalized
ordinal potential games. |
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DOI: | 10.48550/arxiv.2210.07184 |