Reversals of Least-Square Estimates and Model-Invariant Estimation for Directions of Unique Effects

Citation
Brian Knaeble et Seth Dutter, Reversals of Least-Square Estimates and Model-Invariant Estimation for Directions of Unique Effects, American statistician , 71(2), 2017, pp. 97-105
Journal title
ISSN journal
00031305
Volume
71
Issue
2
Year of publication
2017
Pages
97 - 105
Database
ACNP
SICI code
Abstract
When a linear model is adjusted to control for additional explanatory variables, the sign of a fitted coefficient may reverse.Here, these reversals are studied using coefficients of determination.The resulting theory can be used to determine directions of unique effects in the presence of model uncertainty.This process is called model-invariant estimation when the estimates are invariant across changes to the model structure.When a single covariate is added, the reversal region can be understood geometrically as an elliptical cone of two nappes with an axis of symmetry relating to a best-possible condition for a reversal using a single coefficient of determination.When a set of covariates are added to a model with a single explanatory variable, model-invariant estimation can be implemented using subject matter knowledge. More general theory with partial coefficients is applicable to analysis of large datasets.Applications are demonstrated with dietary health data from the United Nations.