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Main Authors: Liu, Yifan, Kuai, Chenchen, Ma, Haoxuan, Liao, Xishun, He, Brian Yueshuai, Ma, Jiaqi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.11715
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author Liu, Yifan
Kuai, Chenchen
Ma, Haoxuan
Liao, Xishun
He, Brian Yueshuai
Ma, Jiaqi
author_facet Liu, Yifan
Kuai, Chenchen
Ma, Haoxuan
Liao, Xishun
He, Brian Yueshuai
Ma, Jiaqi
contents Human travel trajectory mining is crucial for transportation systems, enhancing route optimization, traffic management, and the study of human travel patterns. Previous rule-based approaches without the integration of semantic information show a limitation in both efficiency and accuracy. Semantic information, such as activity types inferred from Points of Interest (POI) data, can significantly enhance the quality of trajectory mining. However, integrating these insights is challenging, as many POIs have incomplete feature information, and current learning-based POI algorithms require the integrity of datasets to do the classification. In this paper, we introduce a novel pipeline for human travel trajectory mining. Our approach first leverages the strong inferential and comprehension capabilities of large language models (LLMs) to annotate POI with activity types and then uses a Bayesian-based algorithm to infer activity for each stay point in a trajectory. In our evaluation using the OpenStreetMap (OSM) POI dataset, our approach achieves a 93.4% accuracy and a 96.1% F-1 score in POI classification, and a 91.7% accuracy with a 92.3% F-1 score in activity inference.
format Preprint
id arxiv_https___arxiv_org_abs_2405_11715
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Semantic Trajectory Data Mining with LLM-Informed POI Classification
Liu, Yifan
Kuai, Chenchen
Ma, Haoxuan
Liao, Xishun
He, Brian Yueshuai
Ma, Jiaqi
Artificial Intelligence
Machine Learning
Human travel trajectory mining is crucial for transportation systems, enhancing route optimization, traffic management, and the study of human travel patterns. Previous rule-based approaches without the integration of semantic information show a limitation in both efficiency and accuracy. Semantic information, such as activity types inferred from Points of Interest (POI) data, can significantly enhance the quality of trajectory mining. However, integrating these insights is challenging, as many POIs have incomplete feature information, and current learning-based POI algorithms require the integrity of datasets to do the classification. In this paper, we introduce a novel pipeline for human travel trajectory mining. Our approach first leverages the strong inferential and comprehension capabilities of large language models (LLMs) to annotate POI with activity types and then uses a Bayesian-based algorithm to infer activity for each stay point in a trajectory. In our evaluation using the OpenStreetMap (OSM) POI dataset, our approach achieves a 93.4% accuracy and a 96.1% F-1 score in POI classification, and a 91.7% accuracy with a 92.3% F-1 score in activity inference.
title Semantic Trajectory Data Mining with LLM-Informed POI Classification
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2405.11715