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L-statistics of absolute differences for quantifying the agreement between two variables

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ABSTRACT In many clinical studies, Lin’s (1989) concordance correlation coefficient (CCC) is a popular measure of agreement for continuous outcomes. Most commonly, it is used under the assumption that data… Click to show full abstract

ABSTRACT In many clinical studies, Lin’s (1989) concordance correlation coefficient (CCC) is a popular measure of agreement for continuous outcomes. Most commonly, it is used under the assumption that data are normally distributed. However, in many practical applications, data are often skewed and/or thick-tailed. King and Chinchilli (2001) proposed robust estimation methods of alternative CCC indices, and we propose an approach that extends the existing methods of robust estimators by focusing on functionals that yield robust L-statistics. We provide two data examples to illustrate the methodology, and we discuss the results of computer simulation studies that evaluate statistical performance.

Keywords: agreement; quantifying agreement; statistics absolute; absolute differences; differences quantifying; agreement two

Journal Title: Journal of Biopharmaceutical Statistics
Year Published: 2018

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