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Main Authors: Xue, Siqiao, Zhu, Zhaoyang, Zhang, Wei, Cai, Rongyao, Wang, Rui, Mu, Yixiang, Zhou, Fan, Li, Jianguo, Di, Peng, Yu, Hang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.26017
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author Xue, Siqiao
Zhu, Zhaoyang
Zhang, Wei
Cai, Rongyao
Wang, Rui
Mu, Yixiang
Zhou, Fan
Li, Jianguo
Di, Peng
Yu, Hang
author_facet Xue, Siqiao
Zhu, Zhaoyang
Zhang, Wei
Cai, Rongyao
Wang, Rui
Mu, Yixiang
Zhou, Fan
Li, Jianguo
Di, Peng
Yu, Hang
contents Time series forecasting is critical across finance, healthcare, and cloud computing, yet progress is constrained by a fundamental bottleneck: the scarcity of large-scale, high-quality benchmarks. To address this gap, we introduce \textsc{QuitoBench}, a regime-balanced benchmark for time series forecasting with coverage across eight trend$\times$seasonality$\times$forecastability (TSF) regimes, designed to capture forecasting-relevant properties rather than application-defined domain labels. The benchmark is built upon \textsc{Quito}, a billion-scale time series corpus of application traffic from Alipay spanning nine business domains. Benchmarking 10 models from deep learning, foundation models, and statistical baselines across 232,200 evaluation instances, we report four key findings: (i) a context-length crossover where deep learning models lead at short context ($L=96$) but foundation models dominate at long context ($L \ge 576$); (ii) forecastability is the dominant difficulty driver, producing a $3.64 \times$ MAE gap across regimes; (iii) deep learning models match or surpass foundation models at $59 \times$ fewer parameters; and (iv) scaling the amount of training data provides substantially greater benefit than scaling model size for both model families. These findings are validated by strong cross-benchmark and cross-metric consistency. Our open-source release enables reproducible, regime-aware evaluation for time series forecasting research.
format Preprint
id arxiv_https___arxiv_org_abs_2603_26017
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle QuitoBench: A High-Quality Open Time Series Forecasting Benchmark
Xue, Siqiao
Zhu, Zhaoyang
Zhang, Wei
Cai, Rongyao
Wang, Rui
Mu, Yixiang
Zhou, Fan
Li, Jianguo
Di, Peng
Yu, Hang
Machine Learning
Time series forecasting is critical across finance, healthcare, and cloud computing, yet progress is constrained by a fundamental bottleneck: the scarcity of large-scale, high-quality benchmarks. To address this gap, we introduce \textsc{QuitoBench}, a regime-balanced benchmark for time series forecasting with coverage across eight trend$\times$seasonality$\times$forecastability (TSF) regimes, designed to capture forecasting-relevant properties rather than application-defined domain labels. The benchmark is built upon \textsc{Quito}, a billion-scale time series corpus of application traffic from Alipay spanning nine business domains. Benchmarking 10 models from deep learning, foundation models, and statistical baselines across 232,200 evaluation instances, we report four key findings: (i) a context-length crossover where deep learning models lead at short context ($L=96$) but foundation models dominate at long context ($L \ge 576$); (ii) forecastability is the dominant difficulty driver, producing a $3.64 \times$ MAE gap across regimes; (iii) deep learning models match or surpass foundation models at $59 \times$ fewer parameters; and (iv) scaling the amount of training data provides substantially greater benefit than scaling model size for both model families. These findings are validated by strong cross-benchmark and cross-metric consistency. Our open-source release enables reproducible, regime-aware evaluation for time series forecasting research.
title QuitoBench: A High-Quality Open Time Series Forecasting Benchmark
topic Machine Learning
url https://arxiv.org/abs/2603.26017