Do eReferral, eWOM, familiarity and cultural distance predict enrollment intention? An application of an artificial intelligence technique

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Emerald Group Publishing Ltd

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info:eu-repo/semantics/closedAccess

Abstract

Purpose Little empirical attention has been paid to the effects of electronic word-of-mouth (eWOM), electronic referral (eReferral), familiarity and cultural distance on behavioral outcomes, especially within the context of educational tourism. Based on the social network theory, this paper aims to explore the effects of eReferral, eWOM, familiarity and cultural distance on enrollment intention. Design/methodology/approach Survey data (n = 931) were obtained from educational tourists using a judgmental sampling technique. Linear modeling and artificial intelligence (i.e. artificial neural network [ANN]) techniques were used for training and testing the proposed associations. Findings The results suggest that eReferral, eWOM, familiarity and cultural distance predict intention to enroll both symmetrically (linear modeling) and asymmetrically (ANN). The asymmetric modeling possesses greater predictive validity and relevance. Originality/value This study contributes theoretically and methodologically to the management literature by validating the proposed relationships and deploying contemporary methods such as the ANN. Implications for practice and theory are discussed.

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Cultural distance, Online reviews, Familiarity, Enrollment, Educational tourism, ???, ????, ????, ??, ????

Journal or Series

Journal of Hospitality and Tourism Technology

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Volume

12

Issue

3

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