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Data-driven discovery of self-similarity using neural networks

By Ryota Watanabe and others
Finding self-similarity is a key step for understanding the governing law behind complex physical phenomena. Traditional methods for identifying self-similarity often rely on specific models, which can introduce significant bias. In this paper, we present a novel neural network-based approach that discovers self-similarity directly from observed data, without presupposing any... Show more
June 6, 2024
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Data-driven discovery of self-similarity using neural networks
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