2024
DOI: 10.1088/1742-5468/ad5713
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Extraction of nonlinearity in neural networks with Koopman operator

Naoki Sugishita,
Kayo Kinjo,
Jun Ohkubo

Abstract: Nonlinearity plays a crucial role in deep neural networks. In this paper, we investigate the degree to which the nonlinearity of the neural network is essential. For this purpose, we employ the Koopman operator, extended dynamic mode decomposition, and the tensor-train format. The Koopman operator approach has been recently developed in physics and nonlinear sciences; the Koopman operator deals with the time evolution in the observable space instead of the state space. Since we can replace the nonlinearity in … Show more

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