正则化分类回归学习特征非线性

Samet Oymak, M. Mahdavi, Jiasi Chen
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引用次数: 0

摘要

对于各种应用,因变量和自变量之间的关系是高度非线性的。因此,对于大规模的复杂问题,神经网络和回归树通常优于线性模型,如Lasso。这项工作提出通过对特征值进行分类并使用非凸正则化线性回归在每个分位数中找到最佳拟合来学习特征非线性。该算法首先通过分段常数/线性近似增强平滑性来捕获相邻分位数之间的依赖关系,然后选择良好特征的稀疏子集。我们证明了该算法的统计效率和计算效率。特别是,它在需要接近最小样本数的情况下实现了线性收敛速度。对实际数据集的评估表明,该算法具有较强的竞争力,能够准确地学习到特征非线性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Feature Nonlinearities with Regularized Binned Regression
For various applications, the relations between the dependent and independent variables are highly nonlinear. Consequently, for large scale complex problems, neural networks and regression trees are commonly preferred over linear models such as Lasso. This work proposes learning the feature nonlinearities by binning feature values and finding the best fit in each quantile using non-convex regularized linear regression. The algorithm first captures the dependence between neighboring quantiles by enforcing smoothness via piecewise-constant/linear approximation and then selects a sparse subset of good features. We prove that the proposed algorithm is statistically and computationally efficient. In particular, it achieves linear rate of convergence while requiring near-minimal number of samples. Evaluations on real datasets demonstrate that algorithm is competitive with current state-of-the-art and accurately learns feature nonlinearities.
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