Learning Predictors from Multidimensional Data with Tensor Factorizations

Soo Min Kwon, A. Sarwate
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Abstract

Statistical machine learning algorithms often involve learning a linear relationship between dependent and independent variables. This relationship is modeled as a vector of numerical values, commonly referred to as weights or predictors. These weights allow us to make predictions, and the quality of these weights influence the accuracy of our predictions. However, when the dependent variable inherently possesses a more complex, multidimensional structure, it becomes increasingly difficult to model the relationship with a vector. In this paper, we address this issue by investigating machine learning classification algorithms with multidimensional (tensor) structure. By imposing tensor factorizations on the predictors, we can better model the relationship, as the predictors would take the form of the data in question. We empirically show that our approach works more efficiently than the traditional machine learning method when the data possesses both an exact and an approximate tensor structure. Additionally, we show that estimating predictors with these factorizations also allow us to solve for fewer parameters, making computation more feasible for multidimensional data.
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用张量分解从多维数据中学习预测器
统计机器学习算法通常涉及学习因变量和自变量之间的线性关系。这种关系被建模为数值向量,通常称为权重或预测因子。这些权重使我们能够做出预测,而这些权重的质量影响着我们预测的准确性。然而,当因变量本身具有更复杂的多维结构时,用向量来建模关系变得越来越困难。在本文中,我们通过研究具有多维张量结构的机器学习分类算法来解决这个问题。通过对预测器施加张量分解,我们可以更好地对关系进行建模,因为预测器将采用所讨论的数据的形式。我们的经验表明,当数据同时具有精确和近似张量结构时,我们的方法比传统的机器学习方法更有效。此外,我们还表明,使用这些分解来估计预测器还允许我们求解更少的参数,从而使多维数据的计算更加可行。
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