NeuralFLoC: Neural Flow-Based Joint Registration and Clustering of Functional Data
arXiv stat.ML / 4/30/2026
💬 OpinionModels & Research
Key Points
- NeuralFLoC addresses the challenge of clustering functional data under phase (temporal misalignment) variation by learning to disentangle phase from amplitude.
- The method is a fully unsupervised, end-to-end framework that performs joint functional registration and clustering using Neural ODE-based diffeomorphic flows plus spectral clustering.
- It learns smooth, invertible warping functions while simultaneously estimating cluster-specific templates, rather than treating registration and clustering as separate steps.
- The authors provide theoretical results including universal approximation guarantees and asymptotic consistency for the framework.
- Experiments on functional benchmarks report state-of-the-art performance for both registration and clustering, with robustness to missing data, irregular sampling, and noise, and it claims scalability.
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