Prior-Informed Neural Network Initialization: A Spectral Approach for Function Parameterizing Architectures
arXiv cs.LG / 3/18/2026
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Key Points
- The paper proposes a prior-informed initialization strategy for function-parameterizing neural architectures (e.g., Bag-of-Functions) that aligns initialization with the data's spectral and temporal structure.
- It leverages FFT to extract dominant seasonal priors to guide model depth and initial states, and uses a residual-based regression approach to parameterize trend components.
- The approach reduces encoder dimensionality without sacrificing reconstruction fidelity, leading to faster convergence and lower cross-trial variability.
- The authors provide theoretical analysis for trend estimation in finite-sample settings and demonstrate, through synthetic and real-world experiments, that data-driven priors improve efficiency and performance.
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