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Multilinear class-specific discriminant analysis

机译:多线性分类特定判别分析

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There has been a great effort to transfer linear discriminant techniques that operate on vector data to high-order data, generally referred to as Multilinear Discriminant Analysis (MDA) techniques. Many existing works focus on maximizing the inter-class variances to intra-class variances defined on tensor data representations. However, there has not been any attempt to employ class-specific discrimination criteria for the tensor data. In this paper, we propose a multilinear subspace learning technique suitable for applications requiring class-specific tensor models. The method maximizes the discrimination of each individual class in the feature space while retains the spatial structure of the input. We evaluate the efficiency of the proposed method on two problems, i.e. facial image analysis and stock price prediction based on limit order book data. (c) 2017 Elsevier B.V. All rights reserved.
机译:已经付出了巨大的努力将对向量数据进行操作的线性判别技术转换为高阶数据,通常称为多线性判别分析(MDA)技术。现有的许多工作都集中在将张量数据表示形式上定义的类间方差最大化到类内方差。但是,还没有尝试对张量数据采用特定于类别的判别标准。在本文中,我们提出了一种适合需要类特定张量模型的应用的多线性子空间学习技术。该方法最大程度地保留了特征空间中每个单独类别的辨别力,同时保留了输入的空间结构。我们评估了该方法在两个问题上的有效性,即基于限价订单数据的面部图像分析和股价预测。 (c)2017 Elsevier B.V.保留所有权利。

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