Doubly ranked tests of location for grouped functional data
Mark J. Meyer

TL;DR
This paper introduces a novel doubly ranked nonparametric testing method for grouped functional data, improving power and maintaining error control, with applications across various scientific fields.
Contribution
The paper develops a new doubly ranked test approach for functional data that incorporates the null hypothesis, enhancing power over existing methods.
Findings
Doubly ranked tests outperform traditional methods in power.
The proposed tests maintain proper type I error rates.
Extensions to multiple samples show good test characteristics.
Abstract
Nonparametric tests for functional data are a challenging class of tests to work with because of the potentially high dimensional nature of the data. One of the main challenges for considering rank-based tests, like the Mann-Whitney or Wilcoxon Rank Sum tests (MWW), is that the unit of observation is typically a curve. Thus any rank-based test must consider ways of ranking curves. While several procedures, including depth-based methods, have recently been used to create scores for rank-based tests, these scores are not constructed under the null and often introduce additional, uncontrolled for variability. We therefore reconsider the problem of rank-based tests for functional data and develop an alternative approach that incorporates the null hypothesis throughout. Our approach first ranks realizations from the curves at each measurement occurrence, then calculates a summary statistic…
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Taxonomy
TopicsStatistical Methods and Inference · Advanced Statistical Methods and Models · Geochemistry and Geologic Mapping
