A visual analytics approach to high-dimensional logistic regression modeling and its application to an environmental health study

Chong Zhang, J. Yang, F. Zhan, Xi Gong, J. Brender, P. Langlois, S. Barlowe, Ye Zhao
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引用次数: 17

Abstract

In the domain of epidemiology, logistic regression modeling is widely used to explain the relationships among explanatory variables and dichotomous outcome variables. However, logistic regression modeling faces challenges such as overfitting, confounding, and multicollinearity when there is a large number of explanatory variables. For example, in the birth defect study presented in this paper, variable selection for building high quality models to identify risk factors from hundreds of pollutant variables is difficult. To address this problem, we propose a novel visual analytics approach to logistic regression modeling for high-dimensional datasets. It leverages the traditional modeling pipeline by providing (1) intuitive visualizations for inspecting statistical indicators and the relationships among the variables and (2) a seamless, effective dimension reduction pipeline for selecting variables for inclusion in high quality logistic regression models. A fully working prototype of this approach has been developed and successfully applied to the birth defect study, which illustrates its effectiveness and efficiency. Its application in an insurance policy study and feedback from domain experts further demonstrate its usefulness.
高维逻辑回归模型的可视化分析方法及其在环境健康研究中的应用
在流行病学领域,逻辑回归模型被广泛用于解释变量和二分类结果变量之间的关系。然而,当存在大量的解释变量时,逻辑回归建模面临着过拟合、混淆和多重共线性等挑战。例如,在本文提出的出生缺陷研究中,很难从数百个污染物变量中选择变量来建立高质量的模型以识别危险因素。为了解决这个问题,我们提出了一种新的可视化分析方法来对高维数据集进行逻辑回归建模。它利用传统的建模管道,提供(1)直观的可视化来检查统计指标和变量之间的关系;(2)无缝、有效的降维管道来选择变量,以纳入高质量的逻辑回归模型。该方法已成功地应用于出生缺陷的研究,证明了该方法的有效性和高效性。在保险政策研究中的应用和领域专家的反馈进一步证明了该方法的有效性。
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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