HCAICLJan 25, 2023

Knowing About Knowing: An Illusion of Human Competence Can Hinder Appropriate Reliance on AI Systems

arXiv:2301.11333v1118 citationsh-index: 36
Originality Incremental advance
AI Analysis

This addresses the problem of human cognitive biases in AI-assisted decision-making for HCI and AI researchers, with incremental insights on mitigating effects.

The study investigated whether the Dunning-Kruger Effect, where less-competent individuals overestimate their skills, hinders appropriate reliance on AI systems in decision-making, finding that overestimation leads to under-reliance and a tutorial intervention helped calibrate self-assessment but could harm those with underestimated self-assessment.

The dazzling promises of AI systems to augment humans in various tasks hinge on whether humans can appropriately rely on them. Recent research has shown that appropriate reliance is the key to achieving complementary team performance in AI-assisted decision making. This paper addresses an under-explored problem of whether the Dunning-Kruger Effect (DKE) among people can hinder their appropriate reliance on AI systems. DKE is a metacognitive bias due to which less-competent individuals overestimate their own skill and performance. Through an empirical study (N = 249), we explored the impact of DKE on human reliance on an AI system, and whether such effects can be mitigated using a tutorial intervention that reveals the fallibility of AI advice, and exploiting logic units-based explanations to improve user understanding of AI advice. We found that participants who overestimate their performance tend to exhibit under-reliance on AI systems, which hinders optimal team performance. Logic units-based explanations did not help users in either improving the calibration of their competence or facilitating appropriate reliance. While the tutorial intervention was highly effective in helping users calibrate their self-assessment and facilitating appropriate reliance among participants with overestimated self-assessment, we found that it can potentially hurt the appropriate reliance of participants with underestimated self-assessment. Our work has broad implications on the design of methods to tackle user cognitive biases while facilitating appropriate reliance on AI systems. Our findings advance the current understanding of the role of self-assessment in shaping trust and reliance in human-AI decision making. This lays out promising future directions for relevant HCI research in this community.

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