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Autori principali: Özeren, Enes, Ulbrich, Alexander, Filimon, Sascha, Rügamer, David, Bender, Andreas
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2506.12092
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author Özeren, Enes
Ulbrich, Alexander
Filimon, Sascha
Rügamer, David
Bender, Andreas
author_facet Özeren, Enes
Ulbrich, Alexander
Filimon, Sascha
Rügamer, David
Bender, Andreas
contents A comprehensive understanding of traffic accidents is essential for improving city safety and informing policy decisions. In this study, we analyze traffic incidents in Munich to identify patterns and characteristics that distinguish different types of accidents. The dataset consists of both structured tabular features, such as location, time, and weather conditions, as well as unstructured free-text descriptions detailing the circumstances of each accident. Each incident is categorized into one of seven predefined classes. To assess the reliability of these labels, we apply NLP methods, including topic modeling and few-shot learning, which reveal inconsistencies in the labeling process. These findings highlight potential ambiguities in accident classification and motivate a refined predictive approach. Building on these insights, we develop a classification model that achieves high accuracy in assigning accidents to their respective categories. Our results demonstrate that textual descriptions contain the most informative features for classification, while the inclusion of tabular data provides only marginal improvements. These findings emphasize the critical role of free-text data in accident analysis and highlight the potential of transformer-based models in improving classification reliability.
format Preprint
id arxiv_https___arxiv_org_abs_2506_12092
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing Traffic Accident Classifications: Application of NLP Methods for City Safety
Özeren, Enes
Ulbrich, Alexander
Filimon, Sascha
Rügamer, David
Bender, Andreas
Computation and Language
Machine Learning
I.2.7
A comprehensive understanding of traffic accidents is essential for improving city safety and informing policy decisions. In this study, we analyze traffic incidents in Munich to identify patterns and characteristics that distinguish different types of accidents. The dataset consists of both structured tabular features, such as location, time, and weather conditions, as well as unstructured free-text descriptions detailing the circumstances of each accident. Each incident is categorized into one of seven predefined classes. To assess the reliability of these labels, we apply NLP methods, including topic modeling and few-shot learning, which reveal inconsistencies in the labeling process. These findings highlight potential ambiguities in accident classification and motivate a refined predictive approach. Building on these insights, we develop a classification model that achieves high accuracy in assigning accidents to their respective categories. Our results demonstrate that textual descriptions contain the most informative features for classification, while the inclusion of tabular data provides only marginal improvements. These findings emphasize the critical role of free-text data in accident analysis and highlight the potential of transformer-based models in improving classification reliability.
title Enhancing Traffic Accident Classifications: Application of NLP Methods for City Safety
topic Computation and Language
Machine Learning
I.2.7
url https://arxiv.org/abs/2506.12092