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A Multitask Learning framework for E-commerce time series analytics: Operational risk, demand forecasting, and anomaly detection.

Created on 10 Jul 2026

Authors

Junzhong He, Xiaorui An

Published in

PloS one. Volume 21. Issue 7. Pages e0352809. Epub Jul 09, 2026.

Abstract

The study presents MT-PyraRisk, a multi-task learning framework that integrates pyramidal attention mechanisms for cross-border e-commerce risk prediction. The model processes multimodal time-series data through a shared feature extraction layer and task-specific prediction modules, supporting both regression tasks, such as operational risk and demand forecasting, and classification tasks, such as anomaly detection. Experiments were conducted on the Global E-commerce Dataset and the Kaggle Network Traffic Dataset using a sliding-window time-series setting, with the data divided into training, validation, and testing sets at a ratio of 70%, 15%, and 15%, respectively. The model was evaluated using MSE and MAE for regression tasks and Precision, Recall, and F1-score for classification and anomaly detection tasks. Compared with the strong baseline Timesformer, MT-PyraRisk reduced MSE by approximately 4.3% and improved F1-score and Recall by approximately 1.1% and 2.3%, respectively, on the Global E-commerce Dataset. On the Kaggle Network Traffic Dataset, MT-PyraRisk reduced MSE by approximately 5.1% and improved F1-score, Precision, and Recall by approximately 3.3%, 2.2%, and 4.5%, respectively. Ablation results further demonstrate the contribution of the pyramidal attention mechanism, task-specific prediction layers, and joint optimization module, as removing these components led to clear performance degradation. These results indicate that MT-PyraRisk can provide an effective multi-task modeling solution for operational risk forecasting, demand prediction, and anomaly detection in cross-border e-commerce risk management.

PMID:
42424417
Bibliographic data and abstract were imported from PubMed on 10 Jul 2026.

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