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An Optimization-Based Method for Feature Ranking in Nonlinear Regression Problems

机译:非线性回归问题中基于优化的特征排名方法

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In this paper, we consider the feature ranking problem, where, given a set of training instances, the task is to associate a score with the features in order to assess their relevance. Feature ranking is a very important tool for decision support systems, and may be used as an auxiliary step of feature selection to reduce the high dimensionality of real-world data. We focus on regression problems by assuming that the process underlying the generated data can be approximated by a continuous function (for instance, a feedforward neural network). We formally state the notion of relevance of a feature by introducing a minimum zero-norm inversion problem of a neural network, which is a nonsmooth, constrained optimization problem. We employ a concave approximation of the zero-norm function, and we define a smooth, global optimization problem to be solved in order to assess the relevance of the features. We present the new feature ranking method based on the solution of instances of the global optimization problem depending on the available training data. Computational experiments on both artificial and real data sets are performed, and point out that the proposed feature ranking method is a valid alternative to existing methods in terms of effectiveness. The obtained results also show that the method is costly in terms of CPU time, and this may be a limitation in the solution of large-dimensional problems.
机译:在本文中,我们考虑了特征排名问题,在给定一组训练实例的情况下,任务是将分数与特征相关联以评估其相关性。特征排名是决策支持系统非常重要的工具,可以用作特征选择的辅助步骤,以减少真实世界数据的高维。我们假设通过连续函数(例如,前馈神经网络)可以近似生成数据的基础过程,从而关注回归问题。我们通过引入神经网络的最小零范数反转问题来正式陈述特征相关性的概念,这是一个不平滑,受约束的优化问题。我们采用零范数函数的凹近似,并定义了要解决的光滑全局优化问题,以便评估特征的相关性。我们根据可用的训练数据,基于全局优化问题实例的解决方案,提出了一种新的特征排名方法。在人工数据集和真实数据集上都进行了计算实验,并指出,就有效性而言,所提出的特征排序方法是对现有方法的有效替代。所获得的结果还表明,该方法在CPU时间方面是昂贵的,并且这可能是解决大型问题的限制。

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