2021
DOI: 10.48550/arxiv.2109.12400
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Communication-Efficient Distributed Linear and Deep Generalized Canonical Correlation Analysis

Abstract: Classic and deep learning-based generalized canonical correlation analysis (GCCA) algorithms seek low-dimensional common representations of data entities from multiple "views" (e.g., audio and image) using linear transformations and neural networks, respectively. When the views are acquired and stored at different locations, organizations and edge devices, computing GCCA in a distributed, parallel and efficient manner is wellmotivated. However, existing distributed GCCA algorithms may incur prohitively high co… Show more

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References 27 publications
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