论文标题

使用新的Tensor Tensor产品系列的多线性判别分析

Multilinear Discriminant Analysis using a new family of tensor-tensor products

论文作者

Dufrenois, F., Ichi, A. El, Jbilou, K.

论文摘要

多线性判别分析(MDA)是一种专门为处理张量数据而设计的强大降低方法。确切地说,MDA的目标是找到特定于模式的投影,以最佳的方式将张量数据与不同类别分开。但是,为了解决这项任务,标准MDA方法使用涉及一系列张量 - 马trix产品的交替优化启发式方法。这种方法在大多数时候很难解决,而不是自然的,这很难以完全张量的形式提出此问题。在本文中,我们建议通过使用最近在\ cite {Kilmer2011}中提出的变换域(TD)的概念来解决多线判别分析(MDA)。我们在这里显示,将MDA移至这个特定的转换域,使其分辨率更加容易,更自然。更准确地说,转换后的张量的每个额面都可以独立处理,以构建一个易于求解的单独优化子问题。接下来,通过逆变换将获得的溶液转换为投影张量。通过考虑大量实验,我们显示了我们方法在现有MDA方法方面的有效性。

Multilinear Discriminant Analysis (MDA) is a powerful dimension reduction method specifically formulated to deal with tensor data. Precisely, the goal of MDA is to find mode-specific projections that optimally separate tensor data from different classes. However, to solve this task, standard MDA methods use alternating optimization heuristics involving the computation of a succession of tensor-matrix products. Such approaches are most of the time difficult to solve and not natural, highligthing the difficulty to formulate this problem in fully tensor form. In this paper, we propose to solve multilinear discriminant analysis (MDA) by using the concept of transform domain (TD) recently proposed in \cite{Kilmer2011}. We show here that moving MDA to this specific transform domain make its resolution easier and more natural. More precisely, each frontal face of the transformed tensor is processed independently to build a separate optimization sub-problems easier to solve. Next, the obtained solutions are converted into projective tensors by inverse transform. By considering a large number of experiments, we show the effectiveness of our approach with respect to existing MDA methods.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源