Paper ID: 2502.05155 • Published Feb 7, 2025
Deep Dynamic Probabilistic Canonical Correlation Analysis
Shiqin Tang, Shujian Yu, Yining Dong, S. Joe Qin
TL;DR
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This paper presents Deep Dynamic Probabilistic Canonical Correlation Analysis
(D2PCCA), a model that integrates deep learning with probabilistic modeling to
analyze nonlinear dynamical systems. Building on the probabilistic extensions
of Canonical Correlation Analysis (CCA), D2PCCA captures nonlinear latent
dynamics and supports enhancements such as KL annealing for improved
convergence and normalizing flows for a more flexible posterior approximation.
D2PCCA naturally extends to multiple observed variables, making it a versatile
tool for encoding prior knowledge about sequential datasets and providing a
probabilistic understanding of the system's dynamics. Experimental validation
on real financial datasets demonstrates the effectiveness of D2PCCA and its
extensions in capturing latent dynamics.