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Main Authors: Sun, Fan-Keng, Wu, Yu-Cheng, Boning, Duane S.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.23621
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author Sun, Fan-Keng
Wu, Yu-Cheng
Boning, Duane S.
author_facet Sun, Fan-Keng
Wu, Yu-Cheng
Boning, Duane S.
contents Time series data are everywhere -- from finance to healthcare -- and each domain brings its own unique complexities and structures. While advanced models like Transformers and graph neural networks (GNNs) have gained popularity in time series forecasting, largely due to their success in tasks like language modeling, their added complexity is not always necessary. In our work, we show that simple feedforward neural networks (SFNNs) can achieve performance on par with, or even exceeding, these state-of-the-art models, while being simpler, smaller, faster, and more robust. Our analysis indicates that, in many cases, univariate SFNNs are sufficient, implying that modeling interactions between multiple series may offer only marginal benefits. Even when inter-series relationships are strong, a basic multivariate SFNN still delivers competitive results. We also examine some key design choices and offer guidelines on making informed decisions. Additionally, we critique existing benchmarking practices and propose an improved evaluation protocol. Although SFNNs may not be optimal for every situation (hence the ``almost'' in our title) they serve as a strong baseline that future time series forecasting methods should always be compared against.
format Preprint
id arxiv_https___arxiv_org_abs_2503_23621
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Simple Feedfoward Neural Networks are Almost All You Need for Time Series Forecasting
Sun, Fan-Keng
Wu, Yu-Cheng
Boning, Duane S.
Machine Learning
Time series data are everywhere -- from finance to healthcare -- and each domain brings its own unique complexities and structures. While advanced models like Transformers and graph neural networks (GNNs) have gained popularity in time series forecasting, largely due to their success in tasks like language modeling, their added complexity is not always necessary. In our work, we show that simple feedforward neural networks (SFNNs) can achieve performance on par with, or even exceeding, these state-of-the-art models, while being simpler, smaller, faster, and more robust. Our analysis indicates that, in many cases, univariate SFNNs are sufficient, implying that modeling interactions between multiple series may offer only marginal benefits. Even when inter-series relationships are strong, a basic multivariate SFNN still delivers competitive results. We also examine some key design choices and offer guidelines on making informed decisions. Additionally, we critique existing benchmarking practices and propose an improved evaluation protocol. Although SFNNs may not be optimal for every situation (hence the ``almost'' in our title) they serve as a strong baseline that future time series forecasting methods should always be compared against.
title Simple Feedfoward Neural Networks are Almost All You Need for Time Series Forecasting
topic Machine Learning
url https://arxiv.org/abs/2503.23621