A Sparse Tensor Generator with Efficient Feature Extraction

Tugba Torun, Eren Yenigul, Ameer Taweel, Didem Unat
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Abstract

Sparse tensor operations are gaining attention in emerging applications such as social networks, deep learning, diagnosis, crime, and review analysis. However, a major obstacle for research in sparse tensor operations is the deficiency of a broad-scale sparse tensor dataset. Another challenge in sparse tensor operations is examining the sparse tensor features, which are not only important for revealing its nonzero pattern but also have a significant impact on determining the best-suited storage format, the decomposition algorithm, and the reordering methods. However, due to the large sizes of real tensors, even extracting these features becomes costly without caution. To address these gaps in the literature, we have developed a smart sparse tensor generator that mimics the substantial features of real sparse tensors. Moreover, we propose various methods for efficiently extracting an extensive set of features for sparse tensors. The effectiveness of our generator is validated through the quality of features and the performance of decomposition in the generated tensors. Both the sparse tensor feature extractor and the tensor generator are open source with all the artifacts available at https://github.com/sparcityeu/feaTen and https://github.com/sparcityeu/genTen, respectively.
具有高效特征提取功能的稀疏张量生成器
稀疏张量运算在社交网络、深度学习、诊断、犯罪和评论分析等新兴应用领域越来越受到关注。然而,稀疏张量运算研究的一个主要障碍是缺乏大规模的稀疏张量数据集。稀疏张量运算的另一个挑战是研究稀疏张量特征,这不仅对揭示其非零模式非常重要,而且对确定最合适的存储格式、分解算法和重排序方法也有重大影响。然而,由于实张量的尺寸很大,即使提取这些特征也会变得代价高昂。为了填补这些文献空白,我们开发了一种智能稀疏张量生成器,它可以模拟真实稀疏张量的实质性特征。此外,我们还提出了多种有效提取稀疏张量大量特征的方法。我们通过生成张量的特征质量和分解性能验证了生成器的有效性。稀疏张量特征提取器和张量生成器都是开放源代码的,所有工件都可以在https://github.com/sparcityeu/feaTen 和 https://github.com/sparcityeu/genTen,respectively。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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