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A dimensionality reduction approach for convolutional neural networks

Laura Meneghetti, Nicola Demo, Gianluigi Rozza

2023Applied Intelligence16 citationsDOIOpen Access PDF

Abstract

Abstract The focus of this work is on the application of classical Model Order Reduction techniques, such as Active Subspaces and Proper Orthogonal Decomposition, to Deep Neural Networks. We propose a generic methodology to reduce the number of layers in a pre-trained network by combining the aforementioned techniques for dimensionality reduction with input-output mappings, such as Polynomial Chaos Expansion and Feedforward Neural Networks. The motivation behind compressing the architecture of an existing Convolutional Neural Network arises from its usage in embedded systems with specific storage constraints. The conducted numerical tests demonstrate that the resulting reduced networks can achieve a level of accuracy comparable to the original Convolutional Neural Network being examined, while also saving memory allocation. Our primary emphasis lies in the field of image recognition, where we tested our methodology using VGG-16 and ResNet-110 architectures against three different datasets: CIFAR-10, CIFAR-100, and a custom dataset.

Topics & Concepts

Computer scienceConvolutional neural networkReduction (mathematics)Dimensionality reductionArtificial intelligenceField (mathematics)Artificial neural networkCurse of dimensionalityPattern recognition (psychology)Deep learningFeedforward neural networkKey (lock)MathematicsComputer securityGeometryPure mathematicsModel Reduction and Neural NetworksNeural Networks and ApplicationsProbabilistic and Robust Engineering Design