Unraveling Heterogeneity in Online Shopping and Travel Behavior Through Latent Class Modeling DOI

Ibukun Titiloye,

Md Al Adib Sarker, Xia Jin

et al.

Transportation Research Record Journal of the Transportation Research Board, Journal Year: 2024, Volume and Issue: unknown

Published: March 30, 2024

While existing literature has extensively explored the impact of online shopping on travel behavior, few studies have undertaken segmentation analysis to uncover hidden behavioral heterogeneity. This study fills this gap by addressing heterogeneity and identifying distinct shopper segments based behaviors, with a focus product types. Data collected in November December 2021 from 1,747 shoppers Florida were analyzed using Latent Class Analysis (LCA) covariates. Sociodemographic residential characteristics, COVID-19 influences, attitudes, perceptions channel-specific factors served as active inactive covariates predict class membership. Our model identified six classes shoppers, short-distance dual-channel representing largest (28.4%) exclusive smallest (6.2%). Dual-channel shopaholics, overrepresented Gen Zers, Millennials, Blacks, workers, exhibited high average monthly vehicle miles traveled (VMT) across all types strong potential for complementary behavior. Conversely, members silent generation, those who live alone, no vehicle, do not enjoy shopping, demonstrated substitutive In general, single-channel showed lower VMT than their counterparts These findings contribute deeper understanding offering insights more accurate quantification net traffic environmental impacts e-commerce. Additionally, they provide valuable considerations designing segment-specific policies aimed at minimizing maximizing shopping.

Language: Английский

Factors Influencing MaaS Uptake in the Context of Developing Countries Based on the Unified Theory of Acceptance and Use of Technology 2 (UTAUT2) Framework DOI

Salimah Hasnah,

Debapratim Pandit

Lecture notes in intelligent transportation and infrastructure, Journal Year: 2025, Volume and Issue: unknown, P. 723 - 736

Published: Jan. 1, 2025

Language: Английский

Citations

0

In-depth investigation into the hierarchical causal chain of fatal crashes between vulnerable road users and single motor vehicle DOI
Lan Huang, Peijie Wu, Zhibin Ren

et al.

Traffic Injury Prevention, Journal Year: 2025, Volume and Issue: unknown, P. 1 - 9

Published: April 4, 2025

Crash pattern recognition and characterization are essential for reducing the damage vulnerable road users (VRUs) suffer in motor vehicle crashes. However, traditional methods provide an incomprehensive understanding of crash causality impacts VRU-vehicle interactions. Therefore, this study aims to a reasonable various types To achieve goal, three-layer causal analysis framework was developed. The layers consist physical states (mainly environmental human factors), interactions (pre-crash behaviors drivers VRUs), First, latent class cluster sequence were used identify interactive behavior patterns pairs, respectively. Besides, oversampling algorithm proposed assist Granger test uncovering relationships between pre-crash patterns. Finally, Sankey diagrams utilized compare analyze path. results show that single consecutive crashes have nine eleven typical scenarios, respectively, excluding considering potential chains. These chains new scenarios. It found personal subjective factors primarily influence drivers, while VRUs, traffic environment plays crucial role. Noteworthily, highest risk only associated with chain where vehicles unable brake time. Clarifying interaction is essential, which can help finding critical causes fatal identified VRU violations inability time as determinants severity both Accordingly, targeted safety interventions proposed, including enhancements pedestrian crossing infrastructure improvements braking systems mitigate risk.

Language: Английский

Citations

0

The Mobility as a Service Potential Index (MaaSPI): Assessing the conditions for MaaS across countries based on public sources DOI Creative Commons
César Núñez, Constantinos Antoniou

Research in Transportation Business & Management, Journal Year: 2025, Volume and Issue: 60, P. 101360 - 101360

Published: April 11, 2025

Language: Английский

Citations

0

Identifying latent mobility as a service preference segments among college students DOI Creative Commons
Willy Kriswardhana, Domokos Esztergár-Kiss

European Transport Research Review, Journal Year: 2025, Volume and Issue: 17(1)

Published: April 17, 2025

Language: Английский

Citations

0

Evaluating Korean commuters’ acceptance of MaaS through the UTAUT framework DOI

Seunghee Back,

Minjung Shon, Junseok Hwang

et al.

Case Studies on Transport Policy, Journal Year: 2025, Volume and Issue: unknown, P. 101464 - 101464

Published: April 1, 2025

Language: Английский

Citations

0

Generational differences in the preferences for MaaS bundles DOI Creative Commons
Willy Kriswardhana, Domokos Esztergár-Kiss

Journal of Transport Geography, Journal Year: 2025, Volume and Issue: 126, P. 104256 - 104256

Published: May 2, 2025

Language: Английский

Citations

0

Determinants of switching intention to adopt electric vehicles: A comparative analysis of China and Malaysia DOI
Teng Yu, Ai Ping Teoh, Junyun Liao

et al.

Technology in Society, Journal Year: 2025, Volume and Issue: unknown, P. 102949 - 102949

Published: May 1, 2025

Language: Английский

Citations

0

Research on fast marking method for indicator diagram of pumping well based on K-means clustering DOI Creative Commons
Xiang Wang,

Zhiwei Shao,

Yancen Shen

et al.

Heliyon, Journal Year: 2023, Volume and Issue: 9(10), P. e20468 - e20468

Published: Sept. 28, 2023

Indicator diagram is the key basis for fault diagnosis of pumping wells in oil exploitation. With rapid development machine learning, indicator based on deep learning has garnered increasing attention. This kind methods train neural network models with marked samples, and then inputs images into trained outputs their categories. At present, preparation sample set relies experts' analysis one by one. However, it involves extensive manual work marking prone to errors, so samples are often insufficient quantity. In order quickly mark a large number well data was plotted standardized diagram, three feature extraction diagrams were proposed: original vector, three-dimensional pixel tensor, convolutional network. These convert corresponding vectors, which clustered using K-means clustering algorithm, enabling be classified different categories results. Using 20,000 randomly selected pieces from 100 wells, this study clusters proposed methods. The results indicated that time consumption 0.2, 8.3, 0.7 h, accuracy rates 98%, 92%, 95%, respectively. For diagrams, method vector outstanding performance terms efficiency accuracy. provides an automatic tool dataset, its can increased tens times compared marking.

Language: Английский

Citations

9

Assessing the willingness to pay for Mobility-as-A-Service: An Agent-Based approach DOI
Carolina Cisterna, Federico Bigi, Haruko Nakao

et al.

Case Studies on Transport Policy, Journal Year: 2024, Volume and Issue: 17, P. 101221 - 101221

Published: May 22, 2024

Language: Английский

Citations

3

Optimizing mobility resource allocation in multiple MaaS subscription frameworks: a group method of data handling-driven self-adaptive harmony search algorithm DOI
Haoning Xi, Yan Wang, Zhiqi Shao

et al.

Annals of Operations Research, Journal Year: 2024, Volume and Issue: unknown

Published: Aug. 23, 2024

Language: Английский

Citations

3