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arxiv: 1508.05713 · v1 · pith:XFHZVFNMnew · submitted 2015-08-24 · 📊 stat.ME

The wild bootstrap for multilevel models

classification 📊 stat.ME
keywords bootstrapwildmultileveldataschemesadoptagnosticalways
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In this paper we study the performance of the most popular bootstrap schemes for multilevel data. Also, we propose a modified version of the wild bootstrap procedure for hierarchical data structures. The wild bootstrap does not require homoscedasticity or assumptions on the distribution of the error processes. Hence, it is a valuable tool for robust inference in a multilevel framework. We assess the finite size performances of the schemes through a Monte Carlo study. The results show that for big sample sizes it always pays off to adopt an agnostic approach as the wild bootstrap outperforms other techniques.

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