Extrema-weighted feature extraction for functional data
Willem van den Boom, Callie Mao, Rebecca A. Schroeder, and David B., Dunson

TL;DR
This paper introduces extrema-weighted features (XWFs), a novel method for extracting informative features from functional data, especially emphasizing dynamics during extreme predictor values, demonstrated on blood pressure data to predict postoperative mortality.
Contribution
The paper presents a new class of extrema-weighted feature extraction models that focus on dynamics during extreme predictor values, outperforming existing methods in functional data analysis.
Findings
XWFs identify blood pressure features predictive of mortality
XWFs outperform current methods in simulations
Application demonstrates relevance in medical prognosis
Abstract
Motivation: Although there is a rich literature on methods for assessing the impact of functional predictors, the focus has been on approaches for dimension reduction that can fail dramatically in certain applications. Examples of standard approaches include functional linear models, functional principal components regression, and cluster-based approaches, such as latent trajectory analysis. This article is motivated by applications in which the dynamics in a predictor, across times when the value is relatively extreme, are particularly informative about the response. For example, physicians are interested in relating the dynamics of blood pressure changes during surgery to post-surgery adverse outcomes, and it is thought that the dynamics are more important when blood pressure is significantly elevated or lowered. Methods: We propose a novel class of extrema-weighted feature (XWF)…
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