We consider stochastic gradient descents on the space of large symmetric matrices of suitable functions that are invariant under permuting the rows and columns using the same permutation. We establish deterministic limits of these random curves as the dimensions of the matrices go to infinity while the entries remain bounded. Under a "small noise" assumption the limit is shown to be the gradient flow of functions on graphons whose existence was established in arXiv:2111.09459. We also consider limits of stochastic gradient descents with added properly scaled reflected Brownian noise. The limiting curve of graphons is characterized by a family of stochastic differential equations with reflections and can be thought of as an extension of the classical McKean-Vlasov limit for interacting diffusions. The proofs introduce a family of infinite-dimensional exchangeable arrays of reflected diffusions and a novel notion of propagation of chaos for large matrices of interacting diffusions.
翻译:我们认为,在对齐功能的大型对称基体空间上,存在着不变化的梯度梯度下降,在对齐的行和列下,使用相同的变换。我们确定这些随机曲线的确定性极限,因为基体的尺寸是无限的,而条目则仍然被捆绑。在“小噪声”的假设下,这一极限被显示为在arxiv:21111.09459中建立的图形上的函数梯度流动。我们还考虑到随机梯度梯度下降的极限,加上适当缩放的反映布朗噪音。限制的图形曲线的特征是一组带有反射的随机差异方程式,可以被视为典型的麦肯-弗拉索夫扩散限制的延伸。这些证据引入了反映扩散的无限的可交换阵列和为相互作用扩散的大型矩阵传播混乱的新概念。