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Least Squares Estimation of Weakly Convex Functions

机译:弱凸函数的最小二乘估计

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Function estimation under shape restrictions, such as convexity, has many practical applications and has drawn a lot of recent interests. In this work we argue that convexity, as a global property, is too strict and prone to outliers. Instead, we propose to use weakly convex functions as a simple alternative to quantify “approximate convexity”—a notion that is perhaps more relevant in practice. We prove that, unlike convex functions, weakly convex functions can exactly interpolate any finite dataset and they are universal approximators. Through regularizing the modulus of convexity, we show that weakly convex functions can be efficiently estimated both statistically and algorithmically, requiring minimal modifications to existing algorithms and theory for estimating convex functions. Our numerical experiments confirm the class of weakly convex functions as another competitive alternative for nonparametric estimation.
机译:在诸如凸度之类的形状限制下的函数估计具有许多实际应用,并且引起了许多近期兴趣。在这项工作中,我们认为凸度作为一项全球性属性过于严格,容易出现异常情况。取而代之的是,我们建议使用弱凸函数作为量化“近似凸度”的简单替代方法-这种概念在实践中可能更相关。我们证明,与凸函数不同,弱凸函数可以精确地插值任何有限数据集,并且它们是通用逼近器。通过对凸模量进行正则化,我们表明弱凸函数可以在统计和算法上得到有效估计,仅需对现有算法和估计凸函数的理论进行最少的修改即可。我们的数值实验证实了弱凸函数的类别是非参数估计的另一种竞争选择。

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