Abstract
As a simple and compelling approach for estimating outof- sample prediction error, cross-validation naturally lends itself to the task of model comparison. However, even with moderate sample size, it can be surprisingly difficult to compare multilevel models based on predictive accuracy. Using a hierarchical model fit to large survey data with a battery of questions, we demonstrate that even though cross-validation might give good estimates of pointwise out-of-sample prediction error, it is not always a sensitive instrument for model comparison.
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Wang, W., & Gelman, A. (2015). Difficulty of selecting among multilevel models using predictive accuracy. Statistics and Its Interface, 8(2), 153–160. https://doi.org/10.4310/SII.2015.v8.n2.a3
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