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Main Authors: Pang, Junbiao, Sabir, Muhammad Ayub, Wang, Zhuyun, Hu, Anjing, Yang, Xue, Yu, Haitao, Huang, Qingming
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.11844
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author Pang, Junbiao
Sabir, Muhammad Ayub
Wang, Zhuyun
Hu, Anjing
Yang, Xue
Yu, Haitao
Huang, Qingming
author_facet Pang, Junbiao
Sabir, Muhammad Ayub
Wang, Zhuyun
Hu, Anjing
Yang, Xue
Yu, Haitao
Huang, Qingming
contents In our urban life, Illegal Driver Substitution (IDS) activity for a taxi is a grave unlawful activity in the taxi industry, possibly causing severe traffic accidents and painful social repercussions. Currently, the IDS activity is manually supervised by law enforcers, i.e., law enforcers empirically choose a taxi and inspect it. The pressing problem of this scheme is the dilemma between the limited number of law-enforcers and the large volume of taxis. In this paper, motivated by this problem, we propose a computational method that helps law enforcers efficiently find the taxis which tend to have the IDS activity. Firstly, our method converts the identification of the IDS activity to a supervised learning task. Secondly, two kinds of taxi driver behaviors, i.e., the Sleeping Time and Location (STL) behavior and the Pick-Up (PU) behavior are proposed. Thirdly, the multiple scale pooling on self-similarity is proposed to encode the individual behaviors into the universal features for all taxis. Finally, a Multiple Component- Multiple Instance Learning (MC-MIL) method is proposed to handle the deficiency of the behavior features and to align the behavior features simultaneously. Extensive experiments on a real-world data set shows that the proposed behavior features have a good generalization ability across different classifiers, and the proposed MC-MIL method suppresses the baseline methods.
format Preprint
id arxiv_https___arxiv_org_abs_2404_11844
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Finding A Taxi with Illegal Driver Substitution Activity via Behavior Modelings
Pang, Junbiao
Sabir, Muhammad Ayub
Wang, Zhuyun
Hu, Anjing
Yang, Xue
Yu, Haitao
Huang, Qingming
Computers and Society
In our urban life, Illegal Driver Substitution (IDS) activity for a taxi is a grave unlawful activity in the taxi industry, possibly causing severe traffic accidents and painful social repercussions. Currently, the IDS activity is manually supervised by law enforcers, i.e., law enforcers empirically choose a taxi and inspect it. The pressing problem of this scheme is the dilemma between the limited number of law-enforcers and the large volume of taxis. In this paper, motivated by this problem, we propose a computational method that helps law enforcers efficiently find the taxis which tend to have the IDS activity. Firstly, our method converts the identification of the IDS activity to a supervised learning task. Secondly, two kinds of taxi driver behaviors, i.e., the Sleeping Time and Location (STL) behavior and the Pick-Up (PU) behavior are proposed. Thirdly, the multiple scale pooling on self-similarity is proposed to encode the individual behaviors into the universal features for all taxis. Finally, a Multiple Component- Multiple Instance Learning (MC-MIL) method is proposed to handle the deficiency of the behavior features and to align the behavior features simultaneously. Extensive experiments on a real-world data set shows that the proposed behavior features have a good generalization ability across different classifiers, and the proposed MC-MIL method suppresses the baseline methods.
title Finding A Taxi with Illegal Driver Substitution Activity via Behavior Modelings
topic Computers and Society
url https://arxiv.org/abs/2404.11844