Multivariate Analysis (MVA) comprises a family of well-known methods for feature extraction which exploit correlations among input variables representing the data. One important property that is enjoyed by most such methods is uncorrelation among the extracted features. Recently, regularized versions of MVA methods have appeared in the literature, mainly with the goal to gain interpretability of the solution. In these cases, the solutions can no longer be obtained in a closed manner, and more complex optimization methods that rely on the iteration of two steps are frequently used. This paper recurs to an alternative approach to solve efficiently this iterative problem. The main novelty of this approach lies in preserving several properties of the original methods, most notably the uncorrelation of the extracted features. Under this framework, we propose a novel method that takes advantage of the l-21 norm to perform variable selection during the feature extraction process. Experimental results over different problems corroborate the advantages of the proposed formulation in comparison to state of the art formulations.
翻译:多变量分析(MVA)由一系列众所周知的特征提取方法组成,这些方法利用了代表数据的输入变量之间的相互关系。大多数这类方法享有的一个重要属性是这些提取的特征之间没有关联。最近,文献中出现了常规版本的MVA方法,主要目的是获得解决办法的可解释性。在这些情况下,解决方案无法再以封闭方式获得,依赖迭代两个步骤的更复杂的优化方法经常被使用。本文重现为一种替代方法,以有效解决这一迭接问题。这一方法的主要新颖之处在于保留原始方法的若干属性,最明显的是被提取的特征的无关联性。在此框架下,我们提出了一种新颖的方法,利用l-21规范在特征提取过程中进行变量选择。不同问题的实验结果证实了与艺术制剂的状态相比,拟议公式的优点。