On Recoverability of Randomly Compressed Tensors with Low CP Rank
Shahana Ibrahim,
Xiao Fu,
Xingguo Li
Abstract:Our interest lies in the recoverability properties of compressed tensors under the canonical polyadic decomposition (CPD) model. The considered problem is well-motivated in many applications, e.g., hyperspectral image and video compression. Prior work studied this problem under somewhat special assumptions-e.g., the latent factors of the tensor are sparse or drawn from absolutely continuous distributions. We offer an alternative result: We show that if the tensor is compressed by a subgaussian linear mapping, … Show more
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