Abstract
With the growing pervasiveness of artificial intelligence, the ability to explain the inferences made by machine learning models has become increasingly important. Numerous techniques for model explainability have been proposed, with natural-language textual explanations among the most widely used approaches. When applied to tabular data, these explanations typically draw on input features to justify a given inference. Consequently, a user’s ability to interpret the explanation depends on their understanding of the input features. To quantify this feature-level understanding, Rossberg et al. introduced the Feature Understandability Scale [49]. Building on that work, this proof-of-concept study collects understandability scores across two datasets, proposes a co-optimisation methodology of understandability and accuracy and presents the resulting explanations alongside the model accuracies. This work
contributes to the body of knowledge on model interpretability by design. It is found that accuracy and understandability can be successfully co-optimised while maintaining high classification performances. The resulting explanations are considered more understandable at face value. Further research will aim to
confirm these findings through user evaluation.
contributes to the body of knowledge on model interpretability by design. It is found that accuracy and understandability can be successfully co-optimised while maintaining high classification performances. The resulting explanations are considered more understandable at face value. Further research will aim to
confirm these findings through user evaluation.
| Original language | English (Ireland) |
|---|---|
| Pages | 1-24 |
| Number of pages | 24 |
| Publication status | Published - 3 Jul 2026 |
| Event | 4th World Conference on eXplainable Artificial Intelligence : Building transparent AI - Fortaleza, Brazil, Fortaleza, Brazil, Brazil Duration: 1 Jul 2026 → 3 Jul 2026 https://xaiworldconference.com/2026/ |
Conference
| Conference | 4th World Conference on eXplainable Artificial Intelligence |
|---|---|
| Country/Territory | Brazil |
| City | Fortaleza, Brazil |
| Period | 1/07/26 → 3/07/26 |
| Internet address |
Keywords
- Psychometrics
- Machine learning
- Interpretability by design
- Explainable Artificial Intelligence
- Evaluation methods
- [ComputerScience]
- [Insight Centre for Data Analytics]
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