cs.AI updates on arXiv.org 07月22日
Neural Brownian Motion
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本文提出了一种名为NBM的新随机过程,用于在学习的不确定性下模拟动力学。通过将经典鞅性质替换为相对于非线性神经网络期望算子的性质,NBM在数学上得到了严格的定义。文章证明了在特定结构假设下,这种NBM存在且是随机微分方程的唯一强解,并展示了如何通过学习参数来内生化地确定对不确定性的态度。

arXiv:2507.14499v1 Announce Type: cross Abstract: This paper introduces the Neural-Brownian Motion (NBM), a new class of stochastic processes for modeling dynamics under learned uncertainty. The NBM is defined axiomatically by replacing the classical martingale property with respect to linear expectation with one relative to a non-linear Neural Expectation Operator, $\varepsilon^\theta$, generated by a Backward Stochastic Differential Equation (BSDE) whose driver $f_\theta$ is parameterized by a neural network. Our main result is a representation theorem for a canonical NBM, which we define as a continuous $\varepsilon^\theta$-martingale with zero drift under the physical measure. We prove that, under a key structural assumption on the driver, such a canonical NBM exists and is the unique strong solution to a stochastic differential equation of the form ${\rm d} Mt = \nu\theta(t, M_t) {\rm d} Wt$. Crucially, the volatility function $\nu\theta$ is not postulated a priori but is implicitly defined by the algebraic constraint $g_\theta(t, Mt, \nu\theta(t, Mt)) = 0$, where $g\theta$ is a specialization of the BSDE driver. We develop the stochastic calculus for this process and prove a Girsanov-type theorem for the quadratic case, showing that an NBM acquires a drift under a new, learned measure. The character of this measure, whether pessimistic or optimistic, is endogenously determined by the learned parameters $\theta$, providing a rigorous foundation for models where the attitude towards uncertainty is a discoverable feature.

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神经网络 布朗运动 随机过程 不确定性建模 Girsanov定理
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