多维数据的张量集成学习

I. Kisil, Ahmad Moniri, D. Mandic
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引用次数: 4

摘要

在大数据应用中,经典的集成学习在原始输入数据上通常是不可行的,因此必须采用降维技术。为此,引入了一种新的框架,将经典的平面视图集成学习推广到多维张量值数据。这是通过张量分解来实现的,其中提出的方法,被称为张量集成学习(TEL),将每个输入数据样本分解为多个因素,从而允许灵活地选择多种学习算法,以提高测试性能。TEL框架可以自然地压缩多维数据,以利用其固有的多路数据结构并利用集成学习的优势。通过将高阶奇异值分解(HOSVD)应用于ETH-80数据集,验证了该框架的有效性,并证明其优于经典的自举聚合集成学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TENSOR ENSEMBLE LEARNING FOR MULTIDIMENSIONAL DATA
In big data applications, classical ensemble learning is typically infeasible on the raw input data and dimensionality reduction techniques are necessary. To this end, novel framework that generalises classic flat-view ensemble learning to multidimensional tensor-valued data is introduced. This is achieved by virtue of tensor decompositions, whereby the proposed method, referred to as tensor ensemble learning (TEL), decomposes every input data sample into multiple factors which allows for a flexibility in the choice of multiple learning algorithms in order to improve test performance. The TEL framework is shown to naturally compress multidimensional data in order to take advantage of the inherent multi-way data structure and exploit the benefit of ensemble learning. The proposed framework is verified through the application of Higher Order Singular Value Decomposition (HOSVD) to the ETH-80 dataset and is shown to outperform the classical ensemble learning approach of bootstrap aggregating.
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