SFMD‐X: A New Functional Data Classifier Based on Shrinkage Functional Mahalanobis Distance
Shunke Bao,
Jiakun Guo,
Zhouping Li
Abstract:In this article, we propose a novel classification approach for functional data based on a shrinkage estimate of functional Mahalanobis distance. We first introduce a new shrinkage functional Mahalanobis distance (SFMD), by using this new distance, we transform the functional observations into a set of vector‐valued pseudo‐samples. Furthermore, we adopt some good classification algorithms designed for multivariate data to this pseudo‐samples instead of the original functional data. The new approach has advanta… Show more
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