Articles | Volume 3, issue 2
https://doi.org/10.5194/ascmo-3-67-2017
https://doi.org/10.5194/ascmo-3-67-2017
14 Jul 2017
 | 14 Jul 2017

Assessing NARCCAP climate model effects using spatial confidence regions

Joshua P. French, Seth McGinnis, and Armin Schwartzman

Abstract. We assess similarities and differences between model effects for the North American Regional Climate Change Assessment Program (NARCCAP) climate models using varying classes of linear regression models. Specifically, we consider how the average temperature effect differs for the various global and regional climate model combinations, including assessment of possible interaction between the effects of global and regional climate models. We use both pointwise and simultaneous inference procedures to identify regions where global and regional climate model effects differ. We also show conclusively that results from pointwise inference are misleading, and that accounting for multiple comparisons is important for making proper inference.

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Short summary
We assess the mean temperature effect of global and regional climate model combinations for the North American Regional Climate Change Assessment Program using varying classes of linear regression models, including possible interaction effects. We use both pointwise and simultaneous inference procedures to identify regions where global and regional climate model effects differ. We conclusively show that accounting for multiple comparisons is important for making proper inference.