推论
回归不连续设计
计算机科学
统计推断
代表(政治)
计量经济学
基准推理
图形模型
随机试验
背景(考古学)
人工智能
回归
机器学习
理论计算机科学
统计
数学
频数推理
贝叶斯推理
古生物学
贝叶斯概率
政治
政治学
法学
生物
作者
Christina Korting,Carl Lieberman,Jordan Matsudaira,Zhuan Pei,Yi Shen
摘要
Abstract Despite the widespread use of graphs in empirical research, little is known about readers’ ability to process the statistical information they are meant to convey (“visual inference”). We study visual inference in the context of regression discontinuity (RD) designs by measuring how accurately readers identify discontinuities in graphs produced from data-generating processes calibrated on 11 published papers from leading economics journals. First, we assess the effects of different graphical representation methods on visual inference using randomized experiments. We find that bin widths and fit lines have the largest effects on whether participants correctly perceive the presence or absence of a discontinuity. Our experimental results allow us to make evidence-based recommendations to practitioners, and we suggest using small bins with no fit lines as a starting point to construct RD graphs. Second, we compare visual inference on graphs constructed using our preferred method with widely used econometric inference procedures. We find that visual inference achieves similar or lower type I error (false positive) rates and complements econometric inference.
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