Comprehension Is a Double-Edged Sword: Over-Interpreting Unspecified Information in Intelligible Machine Learning Explanations
Yueqing Xuan, Edward Small, Kacper Sokol, Danula Hettiachchi, Mark, Sanderson

TL;DR
This study reveals that highly understandable machine learning explanations can lead to overconfidence and misinterpretation, highlighting the need for careful design to balance clarity and accuracy in explanations.
Contribution
It provides empirical evidence that comprehensible explanations can cause users to overinterpret and misjudge the scope of information conveyed.
Findings
Highly comprehensible explanations are prone to misinterpretation.
Users tend to be overconfident when misinterpreting explanations.
Explanation types vary in susceptibility to misinterpretation.
Abstract
Automated decision-making systems are becoming increasingly ubiquitous, which creates an immediate need for their interpretability and explainability. However, it remains unclear whether users know what insights an explanation offers and, more importantly, what information it lacks. To answer this question we conducted an online study with 200 participants, which allowed us to assess explainees' ability to realise explicated information -- i.e., factual insights conveyed by an explanation -- and unspecified information -- i.e, insights that are not communicated by an explanation -- across four representative explanation types: model architecture, decision surface visualisation, counterfactual explainability and feature importance. Our findings uncover that highly comprehensible explanations, e.g., feature importance and decision surface visualisation, are exceptionally susceptible to…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Machine Learning in Materials Science
