Using functional information for binary classifications
Pablo Martinez-Camblor

TL;DR
This paper introduces a non-parametric, distance-based binary classification method for functional data, demonstrating its effectiveness through theoretical analysis, simulations, and real-world applications.
Contribution
It proposes a novel non-parametric estimator for the probability-based criterion using functional data, with proven asymptotic properties and superior performance in various scenarios.
Findings
Method performs well compared to competitors in simulations
Effective with adequate sample sizes in training and testing
Successfully applied to real-world dataset
Abstract
The adequate use of information measured in a continuous manner along a period of time represents a methodological challenge. In the last decades, most of traditional statistical procedures have been extended for accommodating these functional data. The binary classification problem, which aims to correctly identify units as positive or negative based on marker values, is not aside of this scenario. The crucial point for making binary classifications based on a marker is to establish an order in the marker values, which is not immediate when these values are presented as functions. Here, we argue that if the marker is related to the characteristic under study, a trajectory from a positive participant should be more similar to trajectories from the positive population than to those drawn from the negative. With this criterion, a classification procedure based on the distance between the…
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Taxonomy
TopicsStatistical Methods and Inference · Advanced Statistical Methods and Models · Bayesian Methods and Mixture Models
