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Main Authors: Dai, Xilin, Xu, Zhijian, Cai, Wanxu, Xu, Qiang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.19975
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author Dai, Xilin
Xu, Zhijian
Cai, Wanxu
Xu, Qiang
author_facet Dai, Xilin
Xu, Zhijian
Cai, Wanxu
Xu, Qiang
contents Most state-of-the-art probabilistic time series forecasting models rely on sampling to represent future uncertainty. However, this paradigm suffers from inherent limitations, such as lacking explicit probabilities, inadequate coverage, and high computational costs. In this work, we introduce \textbf{Probabilistic Scenarios}, an alternative paradigm designed to address the limitations of sampling. It operates by directly producing a finite set of \{Scenario, Probability\} pairs, thus avoiding Monte Carlo-like approximation. To validate this paradigm, we propose \textbf{TimePrism}, a simple model composed of only three parallel linear layers. Surprisingly, TimePrism achieves 9 out of 10 state-of-the-art results across five benchmark datasets on two metrics. The effectiveness of our paradigm comes from a fundamental reframing of the learning objective. Instead of modeling an entire continuous probability space, the model learns to represent a set of plausible scenarios and corresponding probabilities. Our work demonstrates the potential of the Probabilistic Scenarios paradigm, opening a promising research direction in forecasting beyond sampling.
format Preprint
id arxiv_https___arxiv_org_abs_2509_19975
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle From Samples to Scenarios: A New Paradigm for Probabilistic Forecasting
Dai, Xilin
Xu, Zhijian
Cai, Wanxu
Xu, Qiang
Machine Learning
Most state-of-the-art probabilistic time series forecasting models rely on sampling to represent future uncertainty. However, this paradigm suffers from inherent limitations, such as lacking explicit probabilities, inadequate coverage, and high computational costs. In this work, we introduce \textbf{Probabilistic Scenarios}, an alternative paradigm designed to address the limitations of sampling. It operates by directly producing a finite set of \{Scenario, Probability\} pairs, thus avoiding Monte Carlo-like approximation. To validate this paradigm, we propose \textbf{TimePrism}, a simple model composed of only three parallel linear layers. Surprisingly, TimePrism achieves 9 out of 10 state-of-the-art results across five benchmark datasets on two metrics. The effectiveness of our paradigm comes from a fundamental reframing of the learning objective. Instead of modeling an entire continuous probability space, the model learns to represent a set of plausible scenarios and corresponding probabilities. Our work demonstrates the potential of the Probabilistic Scenarios paradigm, opening a promising research direction in forecasting beyond sampling.
title From Samples to Scenarios: A New Paradigm for Probabilistic Forecasting
topic Machine Learning
url https://arxiv.org/abs/2509.19975