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Autores principales: Liu, Bowen, Lai, Haijian, Lam, Chan-Tong, Dong, Junhao, Ng, Benjamin, Ke, Wei, Im, Sio-Kei
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2605.09208
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author Liu, Bowen
Lai, Haijian
Lam, Chan-Tong
Dong, Junhao
Ng, Benjamin
Ke, Wei
Im, Sio-Kei
author_facet Liu, Bowen
Lai, Haijian
Lam, Chan-Tong
Dong, Junhao
Ng, Benjamin
Ke, Wei
Im, Sio-Kei
contents Although many complex models were proposed to analyze time series data, some studies have demonstrated remarkable performance with simpler structures. A recent study proposed a non-parametric framework for 3D point cloud classification, which has the potential to be adapted for time series forecasting and enable interpretability. Inspired by the previous works, we present TSNN, a non-parametric and interpretable framework for traffic time series forecasting. TSNN consists of multiple layers that decouple the time series by matching the entries in a memory bank, where the memory bank is constructed using a similar matching process within the training set. It leverages the periodicity in traffic data to enhance forecasting accuracy while maintaining a simple model architecture. The proposed model operates without trainable parameters, preserving its inherent interpretability. In the experiments, TSNN achieves competitive performance compared to the typical deep learning models in four real-world traffic flow datasets. We also visualize the decoupling process to show the effectiveness of the components. Finally, we demonstrate the interpretability of the model and illustrate the contribution of each time step within the memory bank.
format Preprint
id arxiv_https___arxiv_org_abs_2605_09208
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TSNN: A Non-parametric and Interpretable Framework for Traffic Time Series Forecasting
Liu, Bowen
Lai, Haijian
Lam, Chan-Tong
Dong, Junhao
Ng, Benjamin
Ke, Wei
Im, Sio-Kei
Machine Learning
Although many complex models were proposed to analyze time series data, some studies have demonstrated remarkable performance with simpler structures. A recent study proposed a non-parametric framework for 3D point cloud classification, which has the potential to be adapted for time series forecasting and enable interpretability. Inspired by the previous works, we present TSNN, a non-parametric and interpretable framework for traffic time series forecasting. TSNN consists of multiple layers that decouple the time series by matching the entries in a memory bank, where the memory bank is constructed using a similar matching process within the training set. It leverages the periodicity in traffic data to enhance forecasting accuracy while maintaining a simple model architecture. The proposed model operates without trainable parameters, preserving its inherent interpretability. In the experiments, TSNN achieves competitive performance compared to the typical deep learning models in four real-world traffic flow datasets. We also visualize the decoupling process to show the effectiveness of the components. Finally, we demonstrate the interpretability of the model and illustrate the contribution of each time step within the memory bank.
title TSNN: A Non-parametric and Interpretable Framework for Traffic Time Series Forecasting
topic Machine Learning
url https://arxiv.org/abs/2605.09208