Tag: iwoga
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High-Dimensional Importance-Weighted Information Criteria: Theory and Optimality
High-Dimensional Importance-Weighted Information Criteria: Theory and Optimality arXiv:2505.06531v1 Announce Type: new Abstract: Imori and Ing (2025) proposed the importance-weighted orthogonal greedy algorithm (IWOGA) for model selection in high-dimensional misspecified regression models under covariate shift. To determine the number of IWOGA iterations, they introduced the high-dimensional importance-weighted information criterion (HDIWIC). They argued that the combined use…