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Partial least squares discrimination with heterogeneous covariance structures

机译:具有异构协方差结构的偏最小二乘判别

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Barker and Rayens [1] argued that partial least squares (PLS) is to be preferred over principal components analysis (PCA) when linear discrimination is the goal and dimension reduction is required as a first step. In particular, it is now known that when PLS is used as the dimension reduction tool, information involving Fisher's among-groups sums-of-squares and cross-products matrix is embedded in the structures extracted to achieve that reduction. Liu and Rayens [2] followed up with a formal proof for the superiority of PLS over PCA in the two-group case (with respect to formal misclassification probabilities) and pointed to a subclass of oriented PLS (OrPLS) [3] techniques that would always produce a lower misclassification rate than would PLS, for the two-group problem with like covariance matrices. This paper addresses the situation where these within-groups covariances are potentially not the same, and hence a single reduction step followed by linear discrimination may not be appropriate. A variety of techniques are compared by way of a large-scale simulation study, and a version of the ridged subclass studied by Liu and Rayens [2] emerges as the recommended approach from among those studied. An application aimed at distinguishing asymptomatic women at risk for Alzheimer's disease from women not at risk, based on functional magnetic resonance imaging (fMRI) scans, is also presented.
机译:Barker和Rayens [1]认为,当以线性判别为目标并且第一步需要减少尺寸时,偏最小二乘(PLS)比主成分分析(PCA)更可取。特别地,现在已知的是,当将PLS用作尺寸缩减工具时,涉及Fisher的组间平方和和叉积矩阵的信息将嵌入到提取的结构中以实现该缩减。 Liu和Rayens [2]在两类案例中(相对于形式错误分类概率)给出了PLS优于PCA的形式证明,并指出了定向PLS(OrPLS)技术的子类[3]对于具有相似协方差矩阵的两组问题,总是产生比PLS更低的误分类率。本文讨论了以下情况:组内协方差可能不相同,因此在单个归约步骤后进行线性判别可能不合适。通过大规模的模拟研究比较了各种技术,Liu和Rayens [2]研究的脊状亚类的一个版本作为研究中的推荐方法而出现。还提出了一种应用,旨在基于功能磁共振成像(fMRI)扫描,将无症状的阿尔茨海默氏病妇女与无风险的妇女区分开。

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