Factors influencing consumers’ Airbnb use intention: a meta-analytic analysis using the UTAUT2

W. Bommer, Sandip Roy, Emil Milevoj, Shailesh Rana
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Abstract

PurposeThis study integrates previous research on the intention to use Airbnb to determine which antecedents provide a parsimonious explanation.Design/methodology/approachMeta-analyses based on 61 samples estimate how 8 antecedents are associated with the intention to use Airbnb. Subsequent analyses utilize meta-analyses to estimate a regression model to simultaneously estimate the relationship between the antecedents and the intention to use Airbnb. Relative weight analysis then determined each antecedent’s utility.FindingsA parsimonious model with only four antecedents (hedonic motivation, price value, effort expectancy and social influence) was nearly as predictive as the full eight-antecedent model. Ten moderating variables were examined, but none were deemed to consistently influence the relationships between the antecedents and the intention to use Airbnb.Practical implicationsRelatively few measures (i.e. four) effectively explain customers’ intentions to use Airbnb. When these measures cannot be readily influenced, alternatives are also presented. Implications for the travel industry are considered and straightforward approaches to increasing users are presented.Originality/valueThis is the first integrative review of customers’ intentions to use Airbnb. We integrate what is currently known about customers’ intentions to use Airbnb and then provide a robust model for Airbnb use intentions that both researchers and practitioners can utilize.
影响消费者使用 Airbnb 意向的因素:使用 UTAUT2 进行元分析
设计/方法/途径基于 61 个样本的元分析估计了 8 个前因与使用 Airbnb 的意愿之间的关系。随后的分析利用元分析估算回归模型,同时估算前因与使用 Airbnb 的意愿之间的关系。研究结果一个只有四个前因(享乐动机、价格价值、努力预期和社会影响)的简约模型与完整的八个前因模型几乎一样具有预测性。对十个调节变量进行了研究,但没有一个变量被认为能持续影响前因与使用 Airbnb 的意愿之间的关系。当这些测量方法无法轻易影响客户时,我们也提出了替代方法。我们还考虑了对旅游业的影响,并提出了增加用户的直接方法。 原创性/价值这是首次对顾客使用 Airbnb 的意愿进行综合评述。我们整合了目前已知的顾客使用 Airbnb 的意愿,然后为研究人员和从业人员提供了一个强大的 Airbnb 使用意愿模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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