Multi-layered tensor networks for image classification

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The recently introduced locally orderless tensor network (LoTeNet) for supervised image classification uses matrix product state (MPS) operations on grids of transformed image patches. The resulting patch representations are combined back together into the image space and aggregated hierarchically using multiple MPS blocks per layer to obtain the final decision rules. In this work, we propose a non-patch based modification to LoTeNet that performs one MPS operation per layer, instead of several patch-level operations. The spatial information in the input images to MPS blocks at each layer is squeezed into the feature dimension, similar to LoTeNet, to maximise retained spatial correlation between pixels when images are flattened into 1D vectors. The proposed multi-layered tensor network (MLTN) is capable of learning linear decision boundaries in high dimensional spaces in a multi-layered setting, which results in a reduction in the computation cost compared to LoTeNet without any degradation in performance.
Original languageEnglish
Publication date2020
Number of pages6
Publication statusPublished - 2020
Event1st Workshop on Quantum Tensor Networks in Machine Learning: In conjunction with 34th NeurIPS, 2020 - Online
Duration: 11 Dec 2020 → …

Conference

Conference1st Workshop on Quantum Tensor Networks in Machine Learning
CityOnline
Period11/12/2020 → …

Bibliographical note

Accepted to the First Workshop on Quantum Tensor Networks in Machine Learning. In conjunction with 34th NeurIPS, 2020. Source code at https://github.com/raghavian/mltn

ID: 255889452