Functional Nonlinear Learning
Haixu Wang, Jiguo Cao

TL;DR
This paper introduces FunNoL, a nonlinear learning method for multivariate functional data that improves representation, classification, and robustness to noise over traditional linear methods like FPCA.
Contribution
The paper proposes a novel nonlinear representation learning approach for multivariate functional data, enhancing classification and reconstruction capabilities.
Findings
FunNoL outperforms FPCA in classification accuracy.
The method effectively handles missing data and noise.
Simulation results confirm robustness and efficiency.
Abstract
Using representations of functional data can be more convenient and beneficial in subsequent statistical models than direct observations. These representations, in a lower-dimensional space, extract and compress information from individual curves. The existing representation learning approaches in functional data analysis usually use linear mapping in parallel to those from multivariate analysis, e.g., functional principal component analysis (FPCA). However, functions, as infinite-dimensional objects, sometimes have nonlinear structures that cannot be uncovered by linear mapping. Linear methods will be more overwhelmed given multivariate functional data. For that matter, this paper proposes a functional nonlinear learning (FunNoL) method to sufficiently represent multivariate functional data in a lower-dimensional feature space. Furthermore, we merge a classification model for enriching…
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Taxonomy
TopicsMetabolomics and Mass Spectrometry Studies · Rough Sets and Fuzzy Logic · Traditional Chinese Medicine Studies
