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Exploratory basis pursuit classification

机译:探索性基础追求分类

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Feature selection is a fundamental process in many classifier design problems. However, it is NP-complete and approximate approaches often require requires extensive exploration and evaluation. This paper describes a novel approach that represents feature selection as a continuous regularization problem which has a single, global minimum, where the model's complexity is measured using a 1-norm on the parameter vector. A new exploratory design process is also described that allows the designer to efficiently construct the complete locus of sparse, kernel-based classifiers. It allows the designer to investigate the optimal parameters' trajectories as the regularization parameter is altered and look for effects, such as Simpson's paradox, that occur in many multivariate data analysis problems. The approach is demonstrated on the well-known Australian Credit data set.
机译:特征选择是许多分类器设计问题中的基本过程。但是,它是NP完全的,通常需要采用近似方法进行大量探索和评估。本文介绍了一种新颖的方法,该方法将特征选择表示为具有单个全局最小值的连续正则化问题,其中使用参数向量上的1-范数来测量模型的复杂性。还描述了一种新的探索性设计过程,该过程使设计人员能够有效地构建基于核的稀疏分类器的完整位置。当正则化参数改变时,它允许设计者研究最佳参数的轨迹,并寻找许多多元数据分析问题中出现的效应,例如辛普森悖论。该方法在著名的澳大利亚信贷数据集上得到了证明。

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