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A numerical approach for the fractional Laplacian via deep neural networks

Abstract

We consider the fractional elliptic problem with Dirichlet boundary conditions on a bounded and convex domain DD of Rd\mathbb{R}^d, with d2d \geq 2. In this paper, we perform a stochastic gradient descent algorithm that approximates the solution of the fractional problem via Deep Neural Networks. Additionally, we provide four numerical examples to test the efficiency of the algorithm, and each example will be studied for many values of α(1,2)\alpha \in (1,2) and d2d \geq 2.

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