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Convex-constrained Sparse Additive Modeling and Its Extensions

机译:凸起约束的稀疏添加剂建模及其扩展

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Sparse additive modeling is a class of effective methods for performing high-dimensional nonparametric regression. In this work we show how shape constraints such as convexity/concavity and their extensions, can be integrated into additive models. The proposed sparse difference of convex additive models (SDCAM) can estimate most continuous functions without any a priori smoothness assumption. Motivated by a characterization of difference of convex functions, our method incorporates a natural regularization functional to avoid overfitting and to reduce model complexity. Computationally, we develop an efficient backfitting algorithm with linear periteration complexity. Experiments on both synthetic and real data confirm that our method is competitive against state-of-the-art sparse additive models, with improved performance in most scenarios.
机译:稀疏添加剂建模是用于执行高维非参数回归的一类有效方法。在这项工作中,我们可以展示如何将凸性/凹幅及其扩展等形状约束如何集成到添加模型中。所提出的凸起添加剂模型(SDCAM)的稀疏差异可以估计最连续的功能,而没有任何先验的平滑度假设。通过凸函数差异的表征,我们的方法包括天然正则化功能,以避免过度装备并降低模型复杂性。计算地,我们开发了一种具有线性杠杆复杂性的高效支持算法。合成和实际数据的实验证实,我们的方法与最先进的稀疏添加剂模型具有竞争力,在大多数情况下具有改进的性能。

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