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Parsimonious additive models

机译:简约加性模型

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摘要

A new method for function estimation and variable selection, specifically designed for additive models fitted by cubic splines is proposed. This new method involves regularizing additive models using the l1-norm, which generalizes the lasso to the nonparametric setting. As in the linear case, it shrinks coefficients and produces some coefficients that are exactly zero. It gives parsimonious models, selects significant variables, and reveals nonlinearities in the effects of predictors. Two strategies for finding a parsimonious additive model solution are proposed. Both algorithms are based on a fixed point algorithm, combined with a singular value decomposition that considerably reduces computation. The empirical behavior of parsimonious additive models is compared to the adaptive backfitting BRUTO algorithm. The results allow to characterize the domains in which our approach is effective: it performs significantly better than BRUTO when model estimation is challenging. An implementation of this method is illustrated using real data from the Cophar 1 ANRS 102 trial. Parsimonious additive models are applied to predict the indinavir plasma concentration in HIV patients. Results suggest that this new method is a promising technique for the research and application areas.
机译:提出了一种新的函数估计和变量选择方法,专门针对三次样条拟合的加性模型。这种新方法涉及使用l1范数对加法模型进行正则化,从而将套索推广到非参数设置。与线性情况一样,它会缩小系数并产生一些恰好为零的系数。它提供了简约模型,选择了重要变量,并揭示了预测变量影响中的非线性。提出了两种寻找简约加性模型解的策略。两种算法均基于定点算法,并结合了极大减少计算量的奇异值分解。将简约加性模型的经验行为与自适应反向拟合BRUTO算法进行比较。结果可以表征我们的方法有效的领域:当模型估计具有挑战性时,它的性能明显优于BRUTO。使用来自Cophar 1 ANRS 102试用版的真实数据说明了此方法的实现。简约的加性模型用于预测HIV患者的茚地那韦血浆浓度。结果表明,该新方法对于研究和应用领域是一种很有前途的技术。

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