Artificial intelligence (AI) is reshaping industries by enhancing efficiency and accuracy, yet its adoption remains contingent on user trust, which is frequently undermined by concerns over privacy, algorithmic bias, and security vulnerabilities. Trust in AI depends on principles such as transparency, accountability, safety, privacy, robustness, and reliability, all of which are central to user confidence. However, existing studies often overlook the interdependencies among these factors and their collective influence on user engagement. Guided by Trust Theory and a systematic literature review employing the PRISMA protocol, this study examines the trust indicators most relevant to high-stakes applications. The review reveals that transparency and communication are consistently prioritised, while adaptability and affordability remain underexplored, highlighting gaps in current scholarship. Trust in AI evolves as users gain experience with these systems, with reliability, predictability, and ethical alignment emerging as critical determinants. Addressing persistent challenges such as bias, data protection, and fairness is essential for reinforcing trust and enabling broader adoption of AI across industries.
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Massimo Regona
Queensland University of Technology
Tan Yiğitcanlar
Queensland University of Technology
Carol K.H. Hon
Queensland University of Technology
ACM Computing Surveys
Queensland University of Technology
Sepuluh Nopember Institute of Technology
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Regona et al. (Fri,) studied this question.
synapsesocial.com/papers/696c774feb60fb80d1395866 — DOI: https://doi.org/10.1145/3789256