Variation Pattern Classification of Functional Data
Shuhao Jiao, Ron D. Frostig, Hernando Ombao

TL;DR
This paper introduces the variation pattern classification (VPC) method for functional data, utilizing covariance operators and Hilbert-Schmidt norms to improve discrimination between groups, especially in neurological data analysis.
Contribution
The paper proposes a novel VPC method that employs covariance operators and adaptive basis functions for effective classification and insight into variation patterns.
Findings
VPC method improves classification sensitivity.
Dimension reduction enhances discriminative power.
Empirical results demonstrate method's effectiveness on neurological data.
Abstract
A new classification method for functional data is proposed in this paper. This work is motivated by the need to identify features that discriminate between neurological conditions on which local field potentials (LFPs) were recorded. Regardless of the condition, these local field potentials have zero mean and thus the first moments of these random processes do not have discriminating power. We propose the variation pattern classification (VPC) method {which employs the (auto-)covariance operators as the discriminating features} and uses the Hilbert-Schmidt norm to measure the discrepancy between the (auto-)covariance operators of different groups. The proposed VPC method is demonstrated to be sensitive to the discrepancy, {potentially leading to a higher rate of classification}. One important innovation lies in the dimension reduction where the VPC method data-adaptively determines the…
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Taxonomy
TopicsNeural Networks and Applications · Neural dynamics and brain function · Functional Brain Connectivity Studies
