Human Cognitive Biases in Explanation-Based Interaction: The Case of Within and Between Session Order Effect
Dario Pesenti, Alessandro Bogani, Katya Tentori, Stefano Teso

TL;DR
This study investigates how cognitive biases, specifically order effects, influence user trust and feedback quality in Explanation-Based Interactive Learning, finding limited impact and supporting the robustness of XIL methods.
Contribution
The paper provides large-scale empirical evidence that order effects have minimal influence on user trust and feedback quality in XIL, clarifying human factors in AI interaction.
Findings
Order effects significantly impact trust within sessions.
Order effects have limited influence on feedback quality.
Between-session order effects are negligible.
Abstract
Explanatory Interactive Learning (XIL) is a powerful interactive learning framework designed to enable users to customize and correct AI models by interacting with their explanations. In a nutshell, XIL algorithms select a number of items on which an AI model made a decision (e.g. images and their tags) and present them to users, together with corresponding explanations (e.g. image regions that drive the model's decision). Then, users supply corrective feedback for the explanations, which the algorithm uses to improve the model. Despite showing promise in debugging tasks, recent studies have raised concerns that explanatory interaction may trigger order effects, a well-known cognitive bias in which the sequence of presented items influences users' trust and, critically, the quality of their feedback. We argue that these studies are not entirely conclusive, as the experimental designs…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Intelligent Tutoring Systems and Adaptive Learning · Artificial Intelligence in Healthcare and Education
