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WavPool: A New Block for Deep Neural Networks

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arxiv 2306.08734 v1 pith:JYAMIDT3 submitted 2023-06-14 cs.LG stat.ML

WavPool: A New Block for Deep Neural Networks

classification cs.LG stat.ML
keywords networkdatamulti-resolutionneuralperceptronwavpoolblockconvolutional
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Modern deep neural networks comprise many operational layers, such as dense or convolutional layers, which are often collected into blocks. In this work, we introduce a new, wavelet-transform-based network architecture that we call the multi-resolution perceptron: by adding a pooling layer, we create a new network block, the WavPool. The first step of the multi-resolution perceptron is transforming the data into its multi-resolution decomposition form by convolving the input data with filters of fixed coefficients but increasing size. Following image processing techniques, we are able to make scale and spatial information simultaneously accessible to the network without increasing the size of the data vector. WavPool outperforms a similar multilayer perceptron while using fewer parameters, and outperforms a comparable convolutional neural network by ~ 10% on relative accuracy on CIFAR-10.

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