The transformative power of recommender systems in enhancing citizens’ satisfaction: Evidence from the Moroccan public sector

Author:

El Gharbaoui Ouissale1ORCID,El Boukhari Hayat2ORCID,Salmi Abdelkader3ORCID

Affiliation:

1. Master, Doctoral student, Faculty of Economics and Law, Department of Economics and Management, Sidi Mohamed ben Abdellah University, Morocco

2. Ph.D., Professor of Higher Education, Faculty of Economics and Law, Department of Economics and Management, Sidi Mohamed ben Abdellah University, Morocco

3. Doctor, Faculty of Economics and Law, Mohamed V University, Morocco

Abstract

The study aims to specifically evaluate the potential impact of implementing AI-powered recommender systems on citizen satisfaction within Moroccan public services. As part of its ambitious digital transformation, Morocco is integrating digital technologies into its public sector to enhance service delivery. Recommender systems, by providing personalized, timely, and relevant recommendations, are hypothesized to significantly increase citizens’ satisfaction and transform public service delivery. The study highlights a comprehensive model that captures the complex and interrelated factors influencing recommender system success. This model was tested using Smart PLS (Partial Least Squares) on data collected from a diverse sample of 157 Moroccan citizens. These participants were randomly selected from various demographics and regions to represent the general population’s perspectives on the future implementation of AI-powered recommender systems in public services. The survey tested three hypotheses: the positive relationship between the potential use of recommender systems and anticipated citizen satisfaction (supported; b = 0.694, p = 0.000, t = 21.214), the impact of trust in AI-powered recommender systems on anticipated citizens’ satisfaction (supported; b = 0.543, p = 0.000, t = 14.230) ; and the moderating effect of trust on AI-powered recommender systems showing a positive effect on anticipated satisfaction (supported; b = 0.154, p = 0.000, t = 4.907). These findings suggest that the future integration of AI-powered recommender systems into public services can enhance citizens’ satisfaction, particularly where there is high trust in the technology. AcknowledgmentThis paper is partly supported by Sidi Mohamed ben Abdellah University, Morocco.

Publisher

LLC CPC Business Perspectives

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