Saved in:
Bibliographic Details
Main Authors: Sun, Jialong, Ling, Xinpeng, Zou, Jiaxuan, Kang, Jiawen, Zhang, Kejia
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.25800
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914123535613952
author Sun, Jialong
Ling, Xinpeng
Zou, Jiaxuan
Kang, Jiawen
Zhang, Kejia
author_facet Sun, Jialong
Ling, Xinpeng
Zou, Jiaxuan
Kang, Jiawen
Zhang, Kejia
contents The inherent autocorrelation of time series data presents an ongoing challenge to multivariate time series prediction. Recently, a widely adopted approach has been the incorporation of frequency domain information to assist in long-term prediction tasks. Many researchers have independently observed the spectral bias phenomenon in neural networks, where models tend to fit low-frequency signals before high-frequency ones. However, these observations have often been attributed to the specific architectures designed by the researchers, rather than recognizing the phenomenon as a universal characteristic across models. To unify the understanding of the spectral bias phenomenon in long-term time series prediction, we conducted extensive empirical experiments to measure spectral bias in existing mainstream models. Our findings reveal that virtually all models exhibit this phenomenon. To mitigate the impact of spectral bias, we propose the FreLE (Frequency Loss Enhancement) algorithm, which enhances model generalization through both explicit and implicit frequency regularization. This is a plug-and-play model loss function unit. A large number of experiments have proven the superior performance of FreLE. Code is available at https://github.com/Chenxing-Xuan/FreLE.
format Preprint
id arxiv_https___arxiv_org_abs_2510_25800
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FreIE: Low-Frequency Spectral Bias in Neural Networks for Time-Series Tasks
Sun, Jialong
Ling, Xinpeng
Zou, Jiaxuan
Kang, Jiawen
Zhang, Kejia
Machine Learning
The inherent autocorrelation of time series data presents an ongoing challenge to multivariate time series prediction. Recently, a widely adopted approach has been the incorporation of frequency domain information to assist in long-term prediction tasks. Many researchers have independently observed the spectral bias phenomenon in neural networks, where models tend to fit low-frequency signals before high-frequency ones. However, these observations have often been attributed to the specific architectures designed by the researchers, rather than recognizing the phenomenon as a universal characteristic across models. To unify the understanding of the spectral bias phenomenon in long-term time series prediction, we conducted extensive empirical experiments to measure spectral bias in existing mainstream models. Our findings reveal that virtually all models exhibit this phenomenon. To mitigate the impact of spectral bias, we propose the FreLE (Frequency Loss Enhancement) algorithm, which enhances model generalization through both explicit and implicit frequency regularization. This is a plug-and-play model loss function unit. A large number of experiments have proven the superior performance of FreLE. Code is available at https://github.com/Chenxing-Xuan/FreLE.
title FreIE: Low-Frequency Spectral Bias in Neural Networks for Time-Series Tasks
topic Machine Learning
url https://arxiv.org/abs/2510.25800