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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >A learning algorithm for adaptive canonical correlation analysis of several data sets.
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A learning algorithm for adaptive canonical correlation analysis of several data sets.

机译:一种用于几个数据集的自适应规范相关分析的学习算法。

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摘要

Canonical correlation analysis (CCA) is a classical tool in statistical analysis to find the projections that maximize the correlation between two data sets. In this work we propose a generalization of CCA to several data sets, which is shown to be equivalent to the classical maximum variance (MAXVAR) generalization proposed by Kettenring. The reformulation of this generalization as a set of coupled least squares regression problems is exploited to develop a neural structure for CCA. In particular, the proposed CCA model is a two layer feedforward neural network with lateral connections in the output layer to achieve the simultaneous extraction of all the CCA eigenvectors through deflation. The CCA neural model is trained using a recursive least squares (RLS) algorithm. Finally, the convergence of the proposed learning rule is proved by means of stochastic approximation techniques and their performance is analyzed through simulations.
机译:典型相关分析(CCA)是统计分析中的经典工具,用于查找使两个数据集之间的相关性最大化的预测。在这项工作中,我们建议将CCA推广到几个数据集,这被证明等同于Kettenring提出的经典最大方差(MAXVAR)推广。将此概括概括为一组耦合的最小二乘回归问题,可用于开发CCA的神经结构。特别地,提出的CCA模型是两层前馈神经网络,在输出层中具有横向连接,以通过放气同时提取所有CCA特征向量。使用递归最小二乘(RLS)算法训练CCA神经模型。最后,通过随机逼近技术证明了所提出学习规则的收敛性,并通过仿真对它们的性能进行了分析。

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