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1 September 2008 Estimating Nonlinear Selection Gradients Using Quadratic Regression Coefficients: Double Or Nothing?
John R. Stinchcombe, Aneil F. Agrawal, Paul A. Hohenlohe, Stevan J. Arnold, Mark W. Blows
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Abstract

The use of regression analysis has been instrumental in allowing evolutionary biologists to estimate the strength and mode of natural selection. Although directional and correlational selection gradients are equal to their corresponding regression coefficients, quadratic regression coefficients must be doubled to estimate stabilizing/disruptive selection gradients. Based on a sample of 33 papers published in Evolution between 2002 and 2007, at least 78% of papers have not doubled quadratic regression coefficients, leading to an appreciable underestimate of the strength of stabilizing and disruptive selection. Proper treatment of quadratic regression coefficients is necessary for estimation of fitness surfaces and contour plots, canonical analysis of the γ matrix, and modeling the evolution of populations on an adaptive landscape.

John R. Stinchcombe, Aneil F. Agrawal, Paul A. Hohenlohe, Stevan J. Arnold, and Mark W. Blows "Estimating Nonlinear Selection Gradients Using Quadratic Regression Coefficients: Double Or Nothing?," Evolution 62(9), 2435-2440, (1 September 2008). https://doi.org/10.1111/j.1558-5646.2008.00449.x
Received: 29 February 2008; Accepted: 2 June 2008; Published: 1 September 2008
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KEYWORDS
Adaptive landscape
canonical analysis
correlational selection
disruptive selection
fitness surface
nonlinear selection
stabilizing selection
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