旅游
住所
旅游行为
计划行为理论
心理学
目的地
情境伦理学
背景(考古学)
社会心理学
路径分析(统计学)
结构方程建模
营销
广告
控制(管理)
业务
地理
运输工程
工程类
经济
人口经济学
统计
管理
考古
数学
作者
Liying Wang,Junya Wang,Pengxia Shen,Shangqing Liu,Shuwei Zhang
出处
期刊:Sustainability
[Multidisciplinary Digital Publishing Institute]
日期:2023-09-28
卷期号:15 (19): 14349-14349
被引量:10
摘要
Low-carbon travel is considered as one of the most important strategies to reduce transportation carbon emissions, and its success is decided by the active participation of residents. Based on the theory of planned behavior (TPB) and Attitude-Behavior-Context theory (ABC), this study explores the influencing factors and formation paths of individual low-carbon travel behavior, and analyzes low-carbon travel behavior regarding both daily commuting from residence and tourism destinations. This study collects a sample of 506 respondents and uses Mplus 8.0 to examine the hypotheses. Empirical research results indicate that: (1) A certain gap exists in the individuals’ low-carbon travel behavior between daily residence and tourism destination. Differences exist in direct effects, mediating effects and moderating effects. (2) Low-carbon travel behavioral intention plays a significant mediating role in both daily residence and tourism destination, especially the former. Regarding daily residence, individuals’ attitude, subjective norms and perceived behavioral control have a positive effect on behavior through behavioral intention. Regarding tourism destination, only the attitude-low-carbon travel behavioral intention-behavior path is significant. (3) Situational factors play a significant positive moderating effect on the relationship between low-carbon travel behavioral intention and behavior, especially in tourism destination. This study reveals the internal mechanism of individuals’ low-carbon travel behavior and the differences between travel in daily life and tourism, helping to deepen understanding of individuals’ low-carbon travel behavior and providing guidance for promoting individuals’ low-carbon travel.
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