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Main Authors: Cash, Martha, Fowler, Charlotte, Wyglinski, Alexander M.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.26081
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author Cash, Martha
Fowler, Charlotte
Wyglinski, Alexander M.
author_facet Cash, Martha
Fowler, Charlotte
Wyglinski, Alexander M.
contents This paper analyzes the role of time-series clustering in traffic matrix (TM) prediction. Traffic flows within a TM often exhibit heterogeneous behavior, which can reduce the effectiveness of global forecasting models that predict all flows jointly. To address this, we propose a clustering-based prediction framework that groups flows into smaller subsets and trains separate predictors for each group. Four traffic-flow representations for clustering are explored, namely, histogram, autocorrelation function (ACF), power spectral density (PSD), and naïve partitioning, and how the representation choice and the number of clusters affect prediction performance. Experiments using the publicly available Abilene and GÉANT datasets show that clustering consistently improves over global forecasting baselines, while remaining substantially less costly than local prediction. The results further show that most of the performance gain is achieved at moderate values of K, with diminishing returns as the number of clusters increases. Although different clustering representations produce different partitions of the traffic flows, they often achieve similar root mean squared error (RMSE). This suggests that the main benefit of clustering lies in decomposing the TM prediction task into smaller subproblems, while the exact cluster structure plays a more limited role in determining overall prediction accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2604_26081
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle On the Role of Time Series Clustering in Traffic Matrix Prediction
Cash, Martha
Fowler, Charlotte
Wyglinski, Alexander M.
Networking and Internet Architecture
This paper analyzes the role of time-series clustering in traffic matrix (TM) prediction. Traffic flows within a TM often exhibit heterogeneous behavior, which can reduce the effectiveness of global forecasting models that predict all flows jointly. To address this, we propose a clustering-based prediction framework that groups flows into smaller subsets and trains separate predictors for each group. Four traffic-flow representations for clustering are explored, namely, histogram, autocorrelation function (ACF), power spectral density (PSD), and naïve partitioning, and how the representation choice and the number of clusters affect prediction performance. Experiments using the publicly available Abilene and GÉANT datasets show that clustering consistently improves over global forecasting baselines, while remaining substantially less costly than local prediction. The results further show that most of the performance gain is achieved at moderate values of K, with diminishing returns as the number of clusters increases. Although different clustering representations produce different partitions of the traffic flows, they often achieve similar root mean squared error (RMSE). This suggests that the main benefit of clustering lies in decomposing the TM prediction task into smaller subproblems, while the exact cluster structure plays a more limited role in determining overall prediction accuracy.
title On the Role of Time Series Clustering in Traffic Matrix Prediction
topic Networking and Internet Architecture
url https://arxiv.org/abs/2604.26081