Analyzing travel behavior in Hanoi using Support Vector Machine
This study investigates travel decisions (i.e., travel mode and destination) in Hanoi (Vietnam) using Support Vector Machine (SVM). First, a travel interview survey was conducted and 311 responses were collected across Hanoi. Second, a SVM model was trained to predict travel decisions and compared with a multinomial logit (MNL) model (as a benchmark). Third, the most important variables that affect travel decisions were ranked and discussed. The results show that SVM achieves an accuracy of 76.1% (compared to 72.9% for MNL). Moreover, proposed parking charge, household income, trip mode, and trip cost are found to be the most important variables. In contrast, trip purpose, gender, and occupation are found to negatively affect the model. Overall, low travel cost and low motorcycle parking charge, especially for commuters and shoppers, make people less willing to switch to more sustainable modes such as public and active transport.
Funding
CAREER: Understanding the Fundamental Principles Driving Household Energy and Resource Consumption for Smart, Sustainable, and Resilient Communities
Directorate for Engineering
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Citation
Truong, Thi My Thanh, Hai-Bang Ly, Dongwoo Lee, Binh Thai Pham, and Sybil Derrible. "Analyzing travel behavior in Hanoi using support vector machine." Transportation planning and technology 44, no. 8 (2021): 843-859. https://doi.org/10.1080/03081060.2021.1992178Publisher
Taylor and FrancisLanguage
- en