Online Recommendation Systems: Factors Influencing Use in E-Commerce
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Abstract
The increasing use of artificial intelligence (AI) to understand purchasing behavior has led to
the development of recommendation systems in e-commerce platforms used as an influential element
in the purchase decision process. This paper intends to ascertain what factors affect consumers’
adoption and use of online purchases recommendation systems. In order to achieve this objective,
the Unified Theory of Adoption and Use of Technology (UTAUT 2) is extended with two variables that
act as an inhibiting or positive influence on intention to use: technology fear and trust. The structural
model was assessed using partial least squares (PLS) with an adequate global adjustment on a sample
of 448 users of online recommendation systems. Among the results, it’s highlighted the importance
of the inhibiting role of technology fear and the importance that users attach to the level of perceived
trust in the recommendation system are highlighted. The performance expectancy and hedonic
motivations have the greatest influence on intention to use these systems. Based on the results,
this work provides a relevant recommendation to companies for the design of their e-commerce
platforms and the implementation of online purchase recommendation systems.
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Bibliographic citation
Cabrera Sánchez, J. P., Ramos de Luna, I., Carvajal Trujillo, E., & Villarejo Ramos, Á. F. (2020). Online Recommendation Systems: Factors Influencing Use in E-Commerce. Sustainability, 12(21), 8888. DOI: https://doi.org/10.3390/su12218888













