The study proves that deep learning algorithms can tackle high-dimensional PDEs effectively. It highlights theoretical results supporting the effectiveness of deep learning in overcoming the curse of dimensionality. The main contribution is proving that deep neural networks can handle nonlinear PDEs with gradient-dependent nonlinearities. The paper introduces a mathematical framework for DNNs and provides rigorous proofs for their capabilities in approximating solutions without suffering from dimensionality issues.
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