Model-Based Clustering and Classification of Functional Data
Faicel Chamroukhi, Hien D. Nguyen

TL;DR
This paper reviews and develops statistical models and algorithms for clustering and classifying high-dimensional functional data, addressing challenges like heterogeneity and missing information, with applications to real-world problems.
Contribution
It introduces novel model-based approaches and efficient algorithms specifically designed for functional data analysis, expanding traditional multivariate methods to complex functional datasets.
Findings
Effective algorithms for clustering and classification of functional data.
Models handle heterogeneity and missing data in high-dimensional settings.
Applications demonstrate practical utility in real-world scenarios.
Abstract
The problem of complex data analysis is a central topic of modern statistical science and learning systems and is becoming of broader interest with the increasing prevalence of high-dimensional data. The challenge is to develop statistical models and autonomous algorithms that are able to acquire knowledge from raw data for exploratory analysis, which can be achieved through clustering techniques or to make predictions of future data via classification (i.e., discriminant analysis) techniques. Latent data models, including mixture model-based approaches are one of the most popular and successful approaches in both the unsupervised context (i.e., clustering) and the supervised one (i.e, classification or discrimination). Although traditionally tools of multivariate analysis, they are growing in popularity when considered in the framework of functional data analysis (FDA). FDA is the data…
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