An Ontology-Enabled Approach For User-Centered and Knowledge-Enabled Explanations of AI Systems
Shruthi Chari

TL;DR
This paper introduces an ontology-based framework for creating user-centered, knowledge-enabled explanations of AI systems, demonstrated through clinical question-answering and explanation combination methods.
Contribution
It develops an explanation ontology representing various explanation types and implements a knowledge-augmented QA pipeline for contextual explanations in healthcare.
Findings
Knowledge augmentation improves language model performance in clinical QA
Clinicians prioritize actionability in explanations
Representation of 15 explanation types across six use cases
Abstract
Explainable Artificial Intelligence (AI) focuses on helping humans understand the working of AI systems or their decisions and has been a cornerstone of AI for decades. Recent research in explainability has focused on explaining the workings of AI models or model explainability. There have also been several position statements and review papers detailing the needs of end-users for user-centered explainability but fewer implementations. Hence, this thesis seeks to bridge some gaps between model and user-centered explainability. We create an explanation ontology (EO) to represent literature-derived explanation types via their supporting components. We implement a knowledge-augmented question-answering (QA) pipeline to support contextual explanations in a clinical setting. Finally, we are implementing a system to combine explanations from different AI methods and data modalities. Within…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Scientific Computing and Data Management · Semantic Web and Ontologies
MethodsBalanced Selection · Ontology
