HCAICYApr 18, 2023

A Systematic Literature Review of User Trust in AI-Enabled Systems: An HCI Perspective

arXiv:2304.08795v1279 citationsh-index: 17
Originality Synthesis-oriented
AI Analysis

It addresses the problem of fostering AI adoption by emphasizing human-centric trust calibration for users and developers, but it is incremental as a review of existing studies.

This systematic literature review analyzed 23 empirical studies to understand user trust in AI-enabled systems from an HCI perspective, finding that trust is influenced by socio-ethical, technical, and user factors, with user characteristics being dominant.

User trust in Artificial Intelligence (AI) enabled systems has been increasingly recognized and proven as a key element to fostering adoption. It has been suggested that AI-enabled systems must go beyond technical-centric approaches and towards embracing a more human centric approach, a core principle of the human-computer interaction (HCI) field. This review aims to provide an overview of the user trust definitions, influencing factors, and measurement methods from 23 empirical studies to gather insight for future technical and design strategies, research, and initiatives to calibrate the user AI relationship. The findings confirm that there is more than one way to define trust. Selecting the most appropriate trust definition to depict user trust in a specific context should be the focus instead of comparing definitions. User trust in AI-enabled systems is found to be influenced by three main themes, namely socio-ethical considerations, technical and design features, and user characteristics. User characteristics dominate the findings, reinforcing the importance of user involvement from development through to monitoring of AI enabled systems. In conclusion, user trust needs to be addressed directly in every context where AI-enabled systems are being used or discussed. In addition, calibrating the user-AI relationship requires finding the optimal balance that works for not only the user but also the system.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes