2021
DOI: 10.1108/apjml-05-2021-0346
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Developing an extended model of self-congruity to predict Chinese tourists' revisit intentions to New Zealand: the moderating role of gender

Abstract: PurposeThis study developed an extended model of self-congruity by integrating destination image, destination personality, self-congruity, revisit intention and gender.Design/methodology/approachSurveys were conducted with 645 Chinese tourists visiting New Zealand. Partial least squares structural equation modelling (PLS-SEM) was performed to estimate linkages between destination image, destination personality, self-congruity and revisit intention. To compare effects on revisit intention across male and female… Show more

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Cited by 33 publications
(42 citation statements)
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“…Smart PLS was recommended by Hair et al (2021) and Sarstedt et al (2022) to test the research model, and scholars agreed that PLS-SEM is suitable for this study since it can estimate the measurement and structural model at the same time ( Gefen et al, 2011 ). In line with previous interdisciplinary studies such as tourism management ( Yang et al, 2021 , 2022a ), social media ( Dalvi-Esfahani et al, 2021 ), consumer behavior ( Yang et al, 2022b ), and this study adopted Smart PLS 3.3.7 to conduct a two-stage approach to test model ( Anderson and Gerbing, 1988 ).…”
Section: Data Analysis and Resultsmentioning
confidence: 99%
“…Smart PLS was recommended by Hair et al (2021) and Sarstedt et al (2022) to test the research model, and scholars agreed that PLS-SEM is suitable for this study since it can estimate the measurement and structural model at the same time ( Gefen et al, 2011 ). In line with previous interdisciplinary studies such as tourism management ( Yang et al, 2021 , 2022a ), social media ( Dalvi-Esfahani et al, 2021 ), consumer behavior ( Yang et al, 2022b ), and this study adopted Smart PLS 3.3.7 to conduct a two-stage approach to test model ( Anderson and Gerbing, 1988 ).…”
Section: Data Analysis and Resultsmentioning
confidence: 99%
“…The relationship between tourism destination image and tourists' intention has become a hot topic in recent years (e.g., Yang et al, 2021Yang et al, , 2022a. Some scholars point out that image perception has become one of the most necessary factors in tourists' decisions (Huete-Alcocer et al, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…This conceptual paper sheds light on tourism research by developing a theoretical framework for tourists' behavioral intention to revisit a destination. Although empirical data from previous studies have confirmed the image model by exploring the relationship between cognitive image, affective image, and behavior intention in various tourism contexts (Agapito et al, 2013 ; Stylos et al, 2016 ; Woosnam et al, 2020 ; Yang et al, 2021c ), the proposed cultural related factors are almost neglected in their conceptualizations. The market internationalization and travel barriers have made it essential to define the construct of culture with different meanings for different landscapes.…”
Section: Discussionmentioning
confidence: 99%
“…Destination image has also gained increasing attention from scholars in the tourism field as it is essential in tourists Kester decision-making processes (i.e., Beerli and Martín, 2004a ; Tseng et al, 2015 ; Chen et al, 2016 ; Yang et al, 2021a , 2022 ). To be specific, destination image has been investigated in several studies as a factor in tourists' behavioral intentions to visit and revisit a destination (Assaker et al, 2011 ; Cheng and Lu, 2013 ; Chew and Jahari, 2014 ; e.g., Alvarez and Campo, 2014 ; Whang et al, 2016 ; Stylos and Bellou, 2019 ; Yang et al, 2021a , c , 2022 ).…”
Section: Introductionmentioning
confidence: 99%