More generalized linear modelling.

D. Quicke, B. A. Butcher, R. K. Welton
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Abstract

Abstract This chapter employs generalized linear modelling using the function glm when we know that variances are not constant with one or more explanatory variables and/or we know that the errors cannot be normally distributed, for example, they may be binary data, or count data where negative values are impossible, or proportions which are constrained between 0 and 1. A glm seeks to determine how much of the variation in the response variable can be explained by each explanatory variable, and whether such relationships are statistically significant. The data for generalized linear models take the form of a continuous response variable and a combination of continuous and discrete explanatory variables.
更广义的线性建模。
当我们知道一个或多个解释变量的方差不是恒定的,并且/或者我们知道误差不能正态分布时,本章使用函数glm进行广义线性建模,例如,它们可能是二进制数据,或者不可能出现负值的计数数据,或者比例被限制在0和1之间。glm旨在确定每个解释变量可以解释多少响应变量的变化,以及这种关系是否具有统计显著性。广义线性模型的数据采用连续响应变量和连续和离散解释变量的组合形式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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