Explaining deep learning-based activity schedule models using SHapley Additive exPlanations
被引:1
作者:
Koushik, Anil
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机构:
Indian Inst Technol Delhi, Dept Civil Engn, 303 Block IV Hauz Khas, New Delhi 110016, IndiaIndian Inst Technol Delhi, Dept Civil Engn, 303 Block IV Hauz Khas, New Delhi 110016, India
Koushik, Anil
[1
]
Manoj, M.
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机构:
Indian Inst Technol Delhi, Dept Civil Engn, 303 Block IV Hauz Khas, New Delhi 110016, IndiaIndian Inst Technol Delhi, Dept Civil Engn, 303 Block IV Hauz Khas, New Delhi 110016, India
Manoj, M.
[1
]
Nezamuddin, N.
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机构:
Indian Inst Technol Delhi, Dept Civil Engn, 303 Block IV Hauz Khas, New Delhi 110016, IndiaIndian Inst Technol Delhi, Dept Civil Engn, 303 Block IV Hauz Khas, New Delhi 110016, India
Nezamuddin, N.
[1
]
机构:
[1] Indian Inst Technol Delhi, Dept Civil Engn, 303 Block IV Hauz Khas, New Delhi 110016, India
来源:
TRANSPORTATION LETTERS-THE INTERNATIONAL JOURNAL OF TRANSPORTATION RESEARCH
|
2025年
/
17卷
/
03期
关键词:
Travel behavior modeling;
activity based models;
machine learning;
interpretability;
deep learning;
explainable AI;
NEURAL-NETWORKS;
CHOICE;
REPRESENTATION;
D O I:
10.1080/19427867.2024.2359304
中图分类号:
U [交通运输];
学科分类号:
08 ;
0823 ;
摘要:
Artificial neural networks are often criticized for their black box nature in travel behavior literature. The lack of understanding of variable influence induces little confidence in model predictions, significantly affecting their practical utility. This study aims to address this issue by employing SHapley Additive exPlanations to understand the influence of different variables in a deep learning-based activity schedule model. The activity schedule is represented as a time series which enables the study of temporal variations in the influence of each variable at much finer resolutions compared to earlier approaches. The findings reveal that variables such as the day-of-week, month of the year, and social participation wield significant influence over the activity schedule, while household structure and urban class also exert noticeable impacts. This proposed methodology enhances our understanding of variable influences at different times of the day, instilling confidence in the deep learning model's results, advancing its practical application.
机构:
San Diego State Univ, Big Data Analyt BDA Program, San Diego, CA 92182 USASan Diego State Univ, Big Data Analyt BDA Program, San Diego, CA 92182 USA
Etaati, Bita
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机构:
Jahangiri, Arash
Fernandez, Gabriela
论文数: 0引用数: 0
h-index: 0
机构:
San Diego State Univ, Dept Geog, San Diego, CA 92182 USASan Diego State Univ, Big Data Analyt BDA Program, San Diego, CA 92182 USA
机构:
San Diego State Univ, Big Data Analyt BDA Program, San Diego, CA 92182 USASan Diego State Univ, Big Data Analyt BDA Program, San Diego, CA 92182 USA
Etaati, Bita
论文数: 引用数:
h-index:
机构:
Jahangiri, Arash
Fernandez, Gabriela
论文数: 0引用数: 0
h-index: 0
机构:
San Diego State Univ, Dept Geog, San Diego, CA 92182 USASan Diego State Univ, Big Data Analyt BDA Program, San Diego, CA 92182 USA