可输入特征数据的实验设计

R. K. Velicheti, Amber Srivastava, S. Salapaka
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引用次数: 0

摘要

选择实验来估计潜在模型是跨各个领域的固有任务。由于实验是有成本的,所以选择具有统计意义的实验是必要的。经典的线性实验设计涉及实验选择,以便在估计回归参数时最小化方差(函数)。通常,解决这个问题的标准算法假设与每个实验相关的数据是完全已知的。这通常是不正确的,因为丢失数据是一个常见问题。因此,在这种情况下选择实验是一项广泛但具有挑战性的任务。标准实验设计是一个NP困难问题,对缺失数据进行输入的附加目标增加了计算复杂度。在本文中,我们提出了一个基于最大熵原理的框架,同时解决了实验设计和缺失数据的输入问题。我们的算法利用了从一个适当选择的凸函数到非凸代价函数的同伦;因此避免了糟糕的局部最小值。此外,我们建议的框架可以灵活地合并特定于应用程序的约束。在各种数据集上的模拟表明,与依次应用于输入和实验选择问题的基准算法相比,成本值提高了60%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of Experiments with Imputable Feature Data
Selection of experiments to estimate an underlying model is an innate task across various fields. Since experiments have costs associated with them, selecting statistically significant experiments becomes necessary. Classic linear experimental design deals with experiment selection so as to minimize (functions of) variance in estimation of regression parameter. Typically, standard algorithms for solving this problem assume that data associated with each experiment is fully known. This is not often true since missing data is a common problem. Hence experiment selection under such scenarios is a widespread but challenging task. Standard design of experiments is an NP hard problem, and the additional objective of imputing for missing data amplifies the computational complexity. In this paper, we propose a maximum-entropy-principle based framework that simultaneously addresses the problem of design of experiments as well as the imputation of missing data. Our algorithm exploits homotopy from a suitably chosen convex function to the non-convex cost function; hence avoiding poor local minima. Further, our proposed framework is flexible to incorporate application specific constraints. Simulations on various datasets show improvement in the cost value by over 60% in comparison to benchmark algorithms applied sequentially to the imputation and experiment selection problems.
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