Trust in AI among Middle Eastern CS Students: Investigating Students' Trust and Usage Patterns Across Saudi Arabia, Kuwait and Jordan
Saleh Alkhamees, Ali Alfageeh, Bader Alkhazi, Duaa Alshdaifat, Amin Alipour

TL;DR
This study investigates trust in AI among Middle Eastern CS students, revealing cultural and linguistic factors influencing trust and highlighting regional differences in AI adoption patterns.
Contribution
It replicates a trust study in Middle Eastern countries, uncovering unique regional and gender-related trust factors affecting AI adoption.
Findings
Language fluency predicts trust in AI.
Female students in Saudi Arabia trust AI less than males.
English proficiency negatively correlates with confidence in AI.
Abstract
Background and Context: Artificial intelligence (AI) tools have been reshaping computing and computer science education. Trust in AI is a determining factor in the adoption of these tools. Recent studies have shown different trust factors across gender and first-generation status among students. However, these studies have focused mainly on Western, Educated, Industrialized, Rich, and Democratic (WEIRD) populations, and their generalizability to other populations with different languages and cultures is unclear. Objective: This study aims to evaluate trust in AI among Middle Eastern computer science students and the factors that can impact it. Method. We replicate a recent study of trust in four universities in three Middle Eastern, Arabic-speaking countries: Saudi Arabia, Kuwait, and Jordan. We analyze trust among students across different factors such as gender and…
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