4.4 Article

Predicting mobile government service continuance: A two-stage structural equation modeling-artificial neural network approach

期刊

GOVERNMENT INFORMATION QUARTERLY
卷 39, 期 1, 页码 -

出版社

ELSEVIER INC
DOI: 10.1016/j.giq.2021.101654

关键词

Mobile government service; Continuance intention; Perceived quality; Perceived value; User satisfaction; User trust

资金

  1. National Social Science Major Program of China [21ZDA105]

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This research investigates the predictors of mobile government service (MGS) continuance by considering perceived quality, perceived value, user satisfaction, user trust, and perceived risk. The study reveals that user satisfaction and trust are the most influential factors in determining continuous-use intention, while perceived risk does not affect the intention to continue use. The findings have important theoretical and practical implications for government agencies and service providers in improving user continuance rates for MGS.
Retaining users of mobile government services (MGS) is critical to the success of mobile government. Drawing on Bagozzi's self-regulation framework, the current research investigates the predictors of MGS continuance by considering both perceived quality and perceived value. Unlike most e-government research that has utilized linear models, this study employed a two-stage structural equation modeling-artificial neural network approach that can identify non-linear and non-compensatory interactions. The current research first applied a structural equation model to examine the significant factors influencing MGS continuance, and then utilized a neural network model recheck the structural equation modeling findings and rank the importance of these factors. Data were obtained from 335 one-stop-shop service platform app users in China through an online survey platform. The research findings reveal that user satisfaction is the utmost influential determinant of their continuous-use intention regarding MGS, followed by user trust; moreover, perceived quality and perceived value strongly influence satisfaction and trust. However, perceived risk does not affect intention to continue use. We also discuss theoretical and practical implications for government agencies and service providers, for improving user continuance rates for MGS.

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