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首页> 外文期刊>Communications in Statistics. B, Simulation and Computation >An Algorithm For Enhancing Spreadsheet Regression With Out-of-sample Statistics
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An Algorithm For Enhancing Spreadsheet Regression With Out-of-sample Statistics

机译:利用样本外统计信息增强电子表格回归的算法

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摘要

An innovative algorithm is developed for obtaining spreadsheet regression measures used in computing out-of-sample statistics. This algorithm alleviates the leave-one-out computational simulation complexity and memory size problems perceived in computing these statistics. Hence, the purpose of this article is to describe a computationally enhanced algorithm that gives spreadsheet users advanced regression capabilities thereby adding a new dimension to spreadsheet regression operations. These statistics include diagonals of the hat matrix, legitimate forecasting intervals, and PRESS residuals. These computational innovations promote learning while eliminating spreadsheet inadequacies thereby making spreadsheet regression attractive to academicians in teaching and practitioners in acquiring further application competence.
机译:开发了一种创新算法,用于获取用于计算样本外统计数据的电子表格回归度量。该算法减轻了在计算这些统计数据时遗忘的计算仿真复杂性和内存大小问题。因此,本文的目的是描述一种计算增强的算法,该算法为电子表格用户提供了先进的回归功能,从而为电子表格回归操作添加了新的维度。这些统计信息包括帽子矩阵的对角线,合法的预测间隔和PRESS残差。这些计算创新促进了学习,同时消除了电子表格的不足,从而使电子表格回归对教学中的院士和从业人员吸引了进一步的应用能力。

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