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Learning Modewise Independent Components from Tensor Data Using Multilinear Mixing Model

机译:使用多线性混合模型从张量数据中学习模态独立分量

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Independent component analysis (ICA) is a popular unsu-pervised learning method. This paper extends it to multilinear mode-wise ICA (MMICA) for tensors and explores two architectures in learning and recognition. MMICA models tensor data as mixtures generated from modewise source matrices that encode statistically independent information. Its sources have more compact representations than the sources in ICA. We embed ICA into the multilinear principal component analysis framework to solve for each source matrix alternatively with a few iterations. Then we obtain mixing tensors through regularized inverses of the source matrices. Simulations on synthetic data show that MMICA can estimate hidden sources accurately from structured tensor data. Moreover, in face recognition experiments, it outperforms competing solutions with both architectures.
机译:独立成分分析(ICA)是一种流行的未经监督的学习方法。本文将其扩展到用于张量的多线性模态ICA(MMICA),并探讨了学习和识别中的两种体系结构。 MMICA将张量数据建模为从模态源矩阵生成的混合数据,该模态源矩阵对统计独立的信息进行编码。它的来源比ICA中的来源具有更紧凑的表示形式。我们将ICA嵌入到多线性主成分分析框架中,以交替迭代几次来求解每个源矩阵。然后,我们通过源矩阵的正则逆获得混合张量。对合成数据的仿真表明,MMICA可以从结构化张量数据中准确估计隐藏源。此外,在人脸识别实验中,它在两种架构下都优于竞争解决方案。

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