Use and misuse of the reduced major axis for line‐fitting
Washington University in St. Louis
Indexed incrossrefpubmed
Abstract
Many investigators use the reduced major axis (RMA) instead of ordinary least squares (OLS) to define a line of best fit for a bivariate relationship when the variable represented on the X-axis is measured with error. OLS frequently is described as requiring the assumption that X is measured without error while RMA incorporates an assumption that there is error in X. Although an RMA fit actually involves a very specific pattern of error variance, investigators have prioritized the presence versus the absence of error rather than the pattern of error in selecting between the two methods. Another difference between RMA and OLS is that RMA is symmetric, meaning that a single line defines the bivariate…
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1Topics & keywords
Topics
Keywords
- Ordinary least squares
- Bivariate analysis
- Statistics
- Mathematics
- Asymmetry
- Variable (mathematics)
- Line (geometry)
- Econometrics
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