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arXiv 提交日期: 2026-05-18
📄 Abstract - Exploring Trust Calibration in XAI - The Impact of Exposing Model Limitations to Lay Users

Trust calibration -- aligning user trust judgment with model capability -- is crucial for safe deployment of explainable AI (XAI), yet is often evaluated via global trust ratings detached from objective performance evidence. We present a preregistered, incentivized between-subject online study (N=418 representative UK sample) on explainable skin-lesion classification that disentangles expectation-setting from experienced performance. Participants completed 15 case evaluations using a fixed XAI panel (malignancy score, reliability score, and saliency map). We systematically manipulated five experimental onboarding conditions varying example-based information and limitation disclosures with five stimulus packages naturally varying observed prediction quality. Calibration was operationalized as the deviation between trust-related judgments (TAIS and case-wise ratings) and objective performance benchmarks for the encountered cases, analysed with hierarchical mixed-effects models. Only limitation disclosure for case-wise measures reliably impacts trust calibration, and short-term experience did not yield progressive calibration. Further, the experienced package of stimuli explained substantially more variance than the experimental manipulation. However, participants were hard-pressed to differentiate between case-wise perceived trust, trustworthiness, and accuracy estimation. We discuss implications for designing limitation communication and for measuring and analysing calibration metrics in XAI evaluations. All study materials and data of this study are publicly available for replication and further academic use.

顶级标签: machine learning medical human evaluation
详细标签: trust calibration xai limitation disclosure skin lesion classification user study 或 搜索:

可解释人工智能中的信任校准研究——向非专业用户暴露模型局限性的影响 / Exploring Trust Calibration in XAI - The Impact of Exposing Model Limitations to Lay Users


1️⃣ 一句话总结

本研究通过在线实验发现,向用户明确展示AI模型的局限性(如预测不可靠的情况)能显著提升其信任校准的准确性,但用户难以区分对单个案例的信任、可信度和准确性感知,且短期使用经验不足以自动改善信任偏差。

源自 arXiv: 2605.18036