Yevgeniy V. Bodyanskiy, O. Boiko, I. Pliss, V. Volkova
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2D-Deep Neural Network and Its Online Rapid Learning
In the paper, the 2D-deep neural network and the algorithm for its online learning are proposed. This system allows reducing the number of adjustable weights due to the rejection of the vectorization-devectorization operations. As a result, it saves the information that is contained between columns and rows of data inputs presented as 2D matrix.