cs.AI updates on arXiv.org 07月04日 12:08
Accelerated Portfolio Optimization and Option Pricing with Reinforcement Learning
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本文提出一种基于强化学习的框架,用于优化迭代求解器中预处理块的大小,以加速投资组合优化和期权定价中的线性系统求解,显著降低计算成本。

arXiv:2507.01972v1 Announce Type: cross Abstract: We present a reinforcement learning (RL)-driven framework for optimizing block-preconditioner sizes in iterative solvers used in portfolio optimization and option pricing. The covariance matrix in portfolio optimization or the discretization of differential operators in option pricing models lead to large linear systems of the form $\mathbf{A}\textbf{x}=\textbf{b}$. Direct inversion of high-dimensional portfolio or fine-grid option pricing incurs a significant computational cost. Therefore, iterative methods are usually used for portfolios in real-world situations. Ill-conditioned systems, however, suffer from slow convergence. Traditional preconditioning techniques often require problem-specific parameter tuning. To overcome this limitation, we rely on RL to dynamically adjust the block-preconditioner sizes and accelerate iterative solver convergence. Evaluations on a suite of real-world portfolio optimization matrices demonstrate that our RL framework can be used to adjust preconditioning and significantly accelerate convergence and reduce computational cost. The proposed accelerated solver supports faster decision-making in dynamic portfolio allocation and real-time option pricing.

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强化学习 迭代求解器 预处理块 投资组合优化 期权定价
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