首页> 外文期刊>Australian & New Zealand journal of statistics >LEAST SQUARES SPARSE PRINCIPAL COMPONENT ANALYSIS: A BACKWARD ELIMINATION APPROACH TO ATTAIN LARGE LOADINGS
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LEAST SQUARES SPARSE PRINCIPAL COMPONENT ANALYSIS: A BACKWARD ELIMINATION APPROACH TO ATTAIN LARGE LOADINGS

机译:最小二乘稀疏主成分分析:对大载荷的后向消除方法

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Sparse principal components analysis (SPCA) is a technique for finding principal components with a small number of non-zero loadings. Our contribution to this methodology is twofold. First we derive the sparse solutions that minimise the least squares criterion subject to sparsity requirements. Second, recognising that sparsity is not the only requirement for achieving simplicity, we suggest a backward elimination algorithm that computes sparse solutions with large loadings. This algorithm can be run without specifying the number of non-zero loadings in advance. It is also possible to impose the requirement that a minimum amount of variance be explained by the components. We give thorough comparisons with existing SPCA methods and present several examples using real datasets.
机译:稀疏主成分分析(SPCA)是一种用于查找具有少量非零载荷的主成分的技术。我们对这种方法的贡献是双重的。首先,我们得出稀疏解,该稀疏解在满足稀疏性要求的情况下最小化了最小二乘准则。其次,认识到稀疏并不是实现简单性的唯一要求,我们建议一种后向消除算法,该算法可计算大负载下的稀疏解。可以在不预先指定非零加载次数的情况下运行该算法。也可以强加要求由组件解释最小量的变化。我们与现有的SPCA方法进行了彻底的比较,并提出了一些使用实际数据集的示例。

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