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Test-Time Training with Adaptive Memory for Traffic Accident Severity Prediction
by
Peng, Duo
, Yan, Weiqi
in
Ablation
/ Accuracy
/ Adaptation
/ adaptive memory
/ class-balanced learning
/ Data mining
/ Datasets
/ Deep learning
/ Fatalities
/ Geospatial data
/ Intelligent transportation systems
/ Intelligent vehicle-highway systems
/ Learning strategies
/ Machine learning
/ Methods
/ Performance degradation
/ Real time
/ Recall
/ self-supervised learning
/ test-time training
/ Testing time
/ traffic accident prediction
/ Traffic accidents
/ Traffic accidents & safety
/ Traffic safety
/ transformer network
2025
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Test-Time Training with Adaptive Memory for Traffic Accident Severity Prediction
by
Peng, Duo
, Yan, Weiqi
in
Ablation
/ Accuracy
/ Adaptation
/ adaptive memory
/ class-balanced learning
/ Data mining
/ Datasets
/ Deep learning
/ Fatalities
/ Geospatial data
/ Intelligent transportation systems
/ Intelligent vehicle-highway systems
/ Learning strategies
/ Machine learning
/ Methods
/ Performance degradation
/ Real time
/ Recall
/ self-supervised learning
/ test-time training
/ Testing time
/ traffic accident prediction
/ Traffic accidents
/ Traffic accidents & safety
/ Traffic safety
/ transformer network
2025
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Do you wish to request the book?
Test-Time Training with Adaptive Memory for Traffic Accident Severity Prediction
by
Peng, Duo
, Yan, Weiqi
in
Ablation
/ Accuracy
/ Adaptation
/ adaptive memory
/ class-balanced learning
/ Data mining
/ Datasets
/ Deep learning
/ Fatalities
/ Geospatial data
/ Intelligent transportation systems
/ Intelligent vehicle-highway systems
/ Learning strategies
/ Machine learning
/ Methods
/ Performance degradation
/ Real time
/ Recall
/ self-supervised learning
/ test-time training
/ Testing time
/ traffic accident prediction
/ Traffic accidents
/ Traffic accidents & safety
/ Traffic safety
/ transformer network
2025
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Test-Time Training with Adaptive Memory for Traffic Accident Severity Prediction
Journal Article
Test-Time Training with Adaptive Memory for Traffic Accident Severity Prediction
2025
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Overview
Traffic accident prediction is essential for improving road safety and optimizing intelligent transportation systems. However, deep learning models often struggle with distribution shifts and class imbalance, leading to degraded performance in real-world applications. While distribution shift is a common challenge in machine learning, Transformer-based models—despite their ability to capture long-term dependencies—often lack mechanisms for dynamic adaptation during inferencing. In this paper, we propose a TTT-Enhanced Transformer that incorporates Test-Time Training (TTT), enabling the model to refine its parameters during inferencing through a self-supervised auxiliary task. To further boost performance, an Adaptive Memory Layer (AML), a Feature Pyramid Network (FPN), Class-Balanced Attention (CBA), and Focal Loss are integrated to address multi-scale, long-term, and imbalance-related challenges. Our experimental results show that our model achieved an overall accuracy of 96.86% and a severe accident recall of 95.8%, outperforming the strongest Transformer baseline by 5.65% in accuracy and 9.6% in recall. The results of our confusion matrix and ROC analyses confirm our model’s superior classification balance and discriminatory power. These findings highlight the potential of our approach in enhancing real-time adaptability and robustness under shifting data distributions and class imbalances in intelligent transportation systems.
Publisher
MDPI AG
Subject
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