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Autores principales: Ke, Zemian, Duan, Haocheng, Qian, Sean
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2409.03282
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author Ke, Zemian
Duan, Haocheng
Qian, Sean
author_facet Ke, Zemian
Duan, Haocheng
Qian, Sean
contents Non-recurrent conditions caused by incidents are different from recurrent conditions that follow periodic patterns. Existing traffic speed prediction studies are incident-agnostic and use one single model to learn all possible patterns from these drastically diverse conditions. This study proposes a novel Mixture of Experts (MoE) model to improve traffic speed prediction under two separate conditions, recurrent and non-recurrent (i.e., with and without incidents). The MoE leverages separate recurrent and non-recurrent expert models (Temporal Fusion Transformers) to capture the distinct patterns of each traffic condition. Additionally, we propose a training pipeline for non-recurrent models to remedy the limited data issues. To train our model, multi-source datasets, including traffic speed, incident reports, and weather data, are integrated and processed to be informative features. Evaluations on a real road network demonstrate that the MoE achieves lower errors compared to other benchmark algorithms. The model predictions are interpreted in terms of temporal dependencies and variable importance in each condition separately to shed light on the differences between recurrent and non-recurrent conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2409_03282
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Interpretable mixture of experts for time series prediction under recurrent and non-recurrent conditions
Ke, Zemian
Duan, Haocheng
Qian, Sean
Machine Learning
Signal Processing
Non-recurrent conditions caused by incidents are different from recurrent conditions that follow periodic patterns. Existing traffic speed prediction studies are incident-agnostic and use one single model to learn all possible patterns from these drastically diverse conditions. This study proposes a novel Mixture of Experts (MoE) model to improve traffic speed prediction under two separate conditions, recurrent and non-recurrent (i.e., with and without incidents). The MoE leverages separate recurrent and non-recurrent expert models (Temporal Fusion Transformers) to capture the distinct patterns of each traffic condition. Additionally, we propose a training pipeline for non-recurrent models to remedy the limited data issues. To train our model, multi-source datasets, including traffic speed, incident reports, and weather data, are integrated and processed to be informative features. Evaluations on a real road network demonstrate that the MoE achieves lower errors compared to other benchmark algorithms. The model predictions are interpreted in terms of temporal dependencies and variable importance in each condition separately to shed light on the differences between recurrent and non-recurrent conditions.
title Interpretable mixture of experts for time series prediction under recurrent and non-recurrent conditions
topic Machine Learning
Signal Processing
url https://arxiv.org/abs/2409.03282