Ming-chang Chiu, Yingfei Wang, et al.
ICASSP 2024
This letter presents a bias-variance tradeoff of graph Laplacian regularizer, which is widely used in graph signal processing and semisupervised learning tasks. The scaling law of the optimal regularization parameter is specified in terms of the spectral graph properties and a novel signal-to-noise ratio parameter, which suggests that selecting a mediocre regularization parameter is often suboptimal. The analysis is applied to three applications, including random, band-limited, and multiple-sampled graph signals. Experiments on synthetic and real-world graphs demonstrate near-optimal performance of the established analysis.
Ming-chang Chiu, Yingfei Wang, et al.
ICASSP 2024
Chao-Han Huck Yang, Jun Qi, et al.
ICASSP 2021
Chulin Xie, Minghao Chen, et al.
ICML 2021
Ching-yun Ko, Pin-Yu Chen, et al.
NeurIPS 2022