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Estimating the Average of a Lipschitz-Continuous Function from One Sample

机译:从一个样本估计Lipschitz连续函数的平均值

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We study the problem of estimating the average of a Lipschitz continuous function / defined over a metric space, by querying / at only a single point. More specifically, we explore the role of randomness in drawing this sample. Our goal is to find a distribution minimizing the expected estimation error against an adversarially chosen Lipschitz continuous function. Our work falls into the broad class of estimating aggregate statistics of a function from a small number of carefully chosen samples. The general problem has a wide range of practical applications in areas such as sensor networks, social sciences and numerical analysis. However, traditional work in numerical analysis has focused on asymptotic bounds, whereas we are interested in the best algorithm. For arbitrary discrete metric spaces of bounded doubling dimension, we obtain a PTAS for this problem. In the special case when the points lie on a line, the running time improves to an FPTAS. For Lipschitz-continuous functions over [0,1], we calculate the precise achievable error as 1 — -^, which improves upon the 1/4 which is best possible for deterministic algorithms.
机译:我们研究通过仅在单个点上查询/来估计在度量空间上定义的Lipschitz连续函数的平均值的问题。更具体地说,我们探讨了随机性在绘制此样本中的作用。我们的目标是针对对抗性选择的Lipschitz连续函数找到使预期估计误差最小的分布。我们的工作属于一类广泛的工作,即从少量经过精心选择的样本中估算函数的总体统计量。一般问题在传感器网络,社会科学和数值分析等领域具有广泛的实际应用。但是,数值分析的传统工作集中在渐近边界上,而我们对最佳算法很感兴趣。对于有界倍增维的任意离散度量空间,我们针对此问题获得了PTAS。在特殊情况下,当点位于一条线上时,运行时间将缩短为FPTAS。对于[0,1]上的Lipschitz连续函数,我们将可实现的精确误差计算为1--^,这对确定性算法最可能的1/4有所改进。

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