2023
DOI: 10.1007/978-3-031-36021-3_51
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Memory-Based Monte Carlo Integration for Solving Partial Differential Equations Using Neural Networks

Abstract: Monte Carlo integration is a widely used quadrature rule to solve Partial Differential Equations with neural networks due to its ability to guarantee overfitting-free solutions and high-dimensional scalability. However, this stochastic method produces noisy losses and gradients during training, which hinders a proper convergence diagnosis. Typically, this is overcome using an immense (disproportionate) amount of integration points, which deteriorates the training performance. This work proposes a memory-based … Show more

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