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Modeling Group Differences in OLS and Orthogonal Regression: Implications for Differential Validity Studies

机译:OLS和正交回归中的组差异建模:对差异有效性研究的启示

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In evaluating the relationship between two measures across different groups (i.e., in evaluating “differential validity”) it is necessary to examine differences in correlation coefficients and in regression lines. Ordinary least squares (OLS) regression is the standard method for fitting lines to data, but its criterion for optimal fit (minimizing the squared vertical distances between the points and the line) is less natural in many contexts than the criterion used in orthogonal regression (minimizing the squared Euclidean distances of points from the line). OLS regression is appropriate if the goal is to predict some unknown dependent variable from a known independent variable, but in examining the relationship between two variables, which both contain error, OLS regression introduces bias. This bias, associated with regression toward the mean, can suggest that the test scores have different relationships, and therefore different meanings, in two groups, when the two sets of test scores have the same relationship and the same meanings in the two groups. The impact of regression toward the mean in differential validity studies is illustrated with two synthetic and two real data sets. Each of the two real data sets include two measures of competence in applying legal principles to fact situations (an essay test and a multiple-choice test) for candidates in two groups (Black/White in the first example and women/men in the second example).View full textDownload full textRelated var addthis_config = { ui_cobrand: "Taylor & Francis Online", services_compact: "citeulike,netvibes,twitter,technorati,delicious,linkedin,facebook,stumbleupon,digg,google,more", pubid: "ra-4dff56cd6bb1830b" }; Add to shortlist Link Permalink http://dx.doi.org/10.1080/08957347.2010.485990
机译:在评估跨不同组的两种度量之间的关系时(即在评估“差异有效性”时),有必要检查相关系数和回归线之间的差异。普通最小二乘(OLS)回归是将线拟合到数据的标准方法,但其最佳拟合标准(最小化点与线之间的垂直垂直距离的平方)在许多情况下不如正交回归中使用的标准自然(最小化点与直线的平方欧几里得距离)。如果目标是从已知的独立变量中预测一些未知的因变量,则OLS回归是合适的,但是在检查两个都包含误差的变量之间的关系时,OLS回归会引入偏差。与偏向均值相关的这种偏见可以表明,当两组考试成绩在两组中具有相同的关系和相同的含义时,考试成绩在两组中具有不同的关系,因此具有不同的含义。用两个综合数据和两个真实数据集说明了差异有效性研究中回归均值的影响。两组真实数据中的每组都包括针对两组中的候选人(第一个示例中的黑人/白人和第二个示例中的女性/男性)将法律原则应用于事实情况的能力评估(论文测试和多项选择测试)例如,查看全文。 ra-4dff56cd6bb1830b“};添加到候选列表链接永久链接http://dx.doi.org/10.1080/08957347.2010.485990

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