SparTen高性能稀疏张量分解软件的参数灵敏度分析

J. Myers, Daniel M. Dunlavy, K. Teranishi, D. Hollman
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引用次数: 3

摘要

张量分解模型在现代数据科学应用中发挥着越来越重要的作用。当张量具有稀疏结构且张量元素为非负计数数据时,如何拟合低秩正则多进(CP)张量分解模型是一个特别有趣的问题。SparTen是一个高性能的c++库,它使用不同的求解器计算低秩分解:一阶准牛顿法或二阶阻尼牛顿法,以及适当的运行时参数选择。由于SparTen中的默认参数被调整为先前发表的使用这些方法的MATLAB实现的单个真实数据集的实验结果,因此SparTen中的默认参数是否适用于一般张量数据仍不清楚。此外,未知算法收敛对输入参数值的变化有多敏感。本报告通过对三个基准张量数据集的大规模实验解决了这些未解决的问题。在几种不同的CPU架构上进行了实验,并在许多初始状态下进行了复制,以建立算法收敛行为的广义轮廓。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter Sensitivity Analysis of the SparTen High Performance Sparse Tensor Decomposition Software
Tensor decomposition models play an increasingly important role in modern data science applications. One problem of particular interest is fitting a low-rank Canonical Polyadic (CP) tensor decomposition model when the tensor has sparse structure and the tensor elements are nonnegative count data. SparTen is a high-performance C++ library which computes a low-rank decomposition using different solvers: a first-order quasi-Newton or a second-order damped Newton method, along with the appropriate choice of runtime parameters. Since default parameters in SparTen are tuned to experimental results in prior published work on a single real-world dataset conducted using MATLAB implementations of these methods, it remains unclear if the parameter defaults in SparTen are appropriate for general tensor data. Furthermore, it is unknown how sensitive algorithm convergence is to changes in the input parameter values. This report addresses these unresolved issues with large-scale experimentation on three benchmark tensor data sets. Experiments were conducted on several different CPU architectures and replicated with many initial states to establish generalized profiles of algorithm convergence behavior.
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