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Main Authors: Zheng, Zhipeng, Jiang, Yuchen, Zhang, Shiyao, Wei, Xuetao
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.09230
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author Zheng, Zhipeng
Jiang, Yuchen
Zhang, Shiyao
Wei, Xuetao
author_facet Zheng, Zhipeng
Jiang, Yuchen
Zhang, Shiyao
Wei, Xuetao
contents The Human Mobility Signature Identification (HuMID) problem stands as a fundamental task within the realm of driving style representation, dedicated to discerning latent driving behaviors and preferences from diverse driver trajectories for driver identification. Its solutions hold significant implications across various domains (e.g., ride-hailing, insurance), wherein their application serves to safeguard users and mitigate potential fraudulent activities. Present HuMID solutions often exhibit limitations in adaptability when confronted with lengthy trajectories, consequently incurring substantial computational overhead. Furthermore, their inability to effectively extract crucial local information further impedes their performance. To address this problem, we propose a Siamese Multiple Attention Temporal Convolutional Network (Siamese MA-TCN) to capitalize on the strengths of both TCN architecture and multi-head self-attention, enabling the proficient extraction of both local and long-term dependencies. Additionally, we devise a novel attention mechanism tailored for the efficient aggregation of multi-scale representations derived from our model. Experimental evaluations conducted on two real-world taxi trajectory datasets reveal that our proposed model effectively extracts both local key information and long-term dependencies. These findings highlight the model's outstanding generalization capabilities, demonstrating its robustness and adaptability across datasets of varying sizes.
format Preprint
id arxiv_https___arxiv_org_abs_2408_09230
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Siamese Multiple Attention Temporal Convolution Networks for Human Mobility Signature Identification
Zheng, Zhipeng
Jiang, Yuchen
Zhang, Shiyao
Wei, Xuetao
Artificial Intelligence
The Human Mobility Signature Identification (HuMID) problem stands as a fundamental task within the realm of driving style representation, dedicated to discerning latent driving behaviors and preferences from diverse driver trajectories for driver identification. Its solutions hold significant implications across various domains (e.g., ride-hailing, insurance), wherein their application serves to safeguard users and mitigate potential fraudulent activities. Present HuMID solutions often exhibit limitations in adaptability when confronted with lengthy trajectories, consequently incurring substantial computational overhead. Furthermore, their inability to effectively extract crucial local information further impedes their performance. To address this problem, we propose a Siamese Multiple Attention Temporal Convolutional Network (Siamese MA-TCN) to capitalize on the strengths of both TCN architecture and multi-head self-attention, enabling the proficient extraction of both local and long-term dependencies. Additionally, we devise a novel attention mechanism tailored for the efficient aggregation of multi-scale representations derived from our model. Experimental evaluations conducted on two real-world taxi trajectory datasets reveal that our proposed model effectively extracts both local key information and long-term dependencies. These findings highlight the model's outstanding generalization capabilities, demonstrating its robustness and adaptability across datasets of varying sizes.
title Siamese Multiple Attention Temporal Convolution Networks for Human Mobility Signature Identification
topic Artificial Intelligence
url https://arxiv.org/abs/2408.09230