Hidden Markov Approach to Dynamically Modeling Car Ownership Behavior

被引:6
|
作者
Yang, Di [1 ]
Xiong, Chenfeng [1 ]
Nasri, Arefeh [1 ]
Zhang, Lei [1 ]
机构
[1] Univ Maryland, A James Clark Sch Engn, Dept Civil & Environm Engn, 1173 Glenn Martin Hall, College Pk, MD 20742 USA
关键词
CHOICE; GENERATION;
D O I
10.3141/2645-14
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
It has become apparent to researchers in various domains that choice behavior occurs in a dynamic context and decision making involves strong temporal dependency, especially when it comes to car ownership decisions, because of consumers' forward-looking behavior. However, a substantial portion of the literature focuses on static model formulations, and limitations exist, particularly in long-term travel demand forecasting. This study proposed a hidden Markov modeling (HMM) framework to analyze car ownership behavior dynamically. The dynamic model framework was applied to the 10-wave Puget Sound (Washington) Transportation Panel data. Two hidden states were identified in this study: State 1 tended to be land use entropy sensitive and vice versa for State 2. Empirical results reveal that households with preschool-age children are more likely to live in urbanized areas where they have easy access to various facilities. Also, one more licensed driver would lead to a 13.33% increase in owning two cars for State 1 households and a 28.45% increase in owning three or more cars for State 2 households. The comparison with both the multinomial logit model and the latent class model favors the study's dynamic model framework with respect to model performance. The HMM approach offers insights on policy development for a target population and provides more accurate forecasting for long-term planning and policy analysis.
引用
收藏
页码:123 / 130
页数:8
相关论文
共 50 条
  • [21] Multivariate analysis of car-following behavior data using a coupled hidden Markov model
    Zou, Yajie
    Zhu, Ting
    Xie, Yuanchang
    Zhang, Yunlong
    Zhang, Yue
    TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2022, 144
  • [22] Modeling MOOC Student Behavior With Two-Layer Hidden Markov Models
    Geigle, Chase
    Zhai, ChengXiang
    PROCEEDINGS OF THE FOURTH (2017) ACM CONFERENCE ON LEARNING @ SCALE (L@S'17), 2017, : 205 - 208
  • [23] HIDDEN MARKOV MODELING OVER GRAPHS
    Kayaalp, Mert
    Bordignon, Virginia
    Vlaski, Stefan
    Sayed, Ali H.
    2022 IEEE DATA SCIENCE AND LEARNING WORKSHOP (DSLW), 2022,
  • [24] Hidden Markov modeling of fading channels
    Turin, W
    van Nobelen, R
    48TH IEEE VEHICULAR TECHNOLOGY CONFERENCE, VOLS 1-3, 1998, : 1234 - 1238
  • [25] Hidden Markov Modeling of Human Pivoting
    Maeda, Yusuke
    Ushioda, Tatsuya
    JOURNAL OF ROBOTICS AND MECHATRONICS, 2007, 19 (04) : 444 - 447
  • [26] A SOFTWARE PACKAGE FOR HIDDEN MARKOV MODELING
    BARAN, RH
    MATHEMATICAL AND COMPUTER MODELLING, 1988, 11 : 476 - 480
  • [27] MAMOT:: hidden Markov modeling tool
    Schuetz, Frederic
    Delorenzi, Mauro
    BIOINFORMATICS, 2008, 24 (11) : 1399 - 1400
  • [28] Maximum confidence hidden Markov modeling
    Liao, Chih-Pin
    Chien, Jen-Tzung
    2006 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING, VOLS 1-13, 2006, : 5407 - 5410
  • [29] Modeling Student Learning Behaviors in ALEKS: A Two-Layer Hidden Markov Modeling Approach
    Wang, Guoyi
    Tang, Yun
    Li, Junyi
    Hu, Xiangen
    ARTIFICIAL INTELLIGENCE IN EDUCATION, PT II, 2018, 10948 : 374 - 378
  • [30] Modeling household car ownership by decision rules
    Wang, Weijie
    Wang, Wei
    Ren, Gang
    ICICTA: 2009 SECOND INTERNATIONAL CONFERENCE ON INTELLIGENT COMPUTATION TECHNOLOGY AND AUTOMATION, VOL II, PROCEEDINGS, 2009, : 99 - 102