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The Core Consistency of a Compressed Tensor

机译:压缩张量的核心一致性

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Tensor decomposition on big data has attracted significant attention recently. Among the most popular methods is a class of algorithms that leverages compression in order to reduce the size of the tensor and potentially parallelize computations. A fundamental requirement for such methods to work properly is that the low-rank tensor structure is retained upon compression. In lieu of efficient and realistic means of computing and studying the effects of compression on the low rank of a tensor, we study the effects of compression on the core consistency; a widely used heuristic that has been used as a proxy for estimating that low rank. We provide theoretical analysis, where we identify sufficient conditions for the compression such that the core consistency is preserved, and we conduct extensive experiments that validate our analysis. Further, we explore popular compression schemes and how they affect the core consistency.
机译:大数据上的张量分解最近引起了广泛的关注。在最流行的方法中,有一类利用压缩以减小张量的大小并可能并行化计算的算法。此类方法正常运行的基本要求是,压缩后必须保留低秩张量结构。代替有效和现实的计算和研究压缩对张量低阶的影响的方法,我们研究了压缩对核心一致性的影响。一种广泛使用的启发式方法,已被用作估计该低排名的代理。我们提供理论分析,确定足够的压缩条件以保持核心一​​致性,并进行广泛的实验以验证分析结果。此外,我们探索了流行的压缩方案以及它们如何影响核心一致性。

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