Distance-Restricted Explanations: Theoretical Underpinnings & Efficient Implementation
Yacine Izza, Xuanxiang Huang, Antonio Morgado, Jordi Planes, Alexey, Ignatiev, Joao Marques-Silva

TL;DR
This paper explores scalable algorithms for logic-based explainability in machine learning, focusing on distance-restricted explanations that provide rigorous insights while addressing computational challenges with large input spaces.
Contribution
It introduces novel algorithms to improve the scalability of logic-based explainers for complex ML models with many inputs.
Findings
Enhanced scalability of logic-based explainers
Effective enumeration of explanations for large input sets
Improved rigor in explanations with distance restrictions
Abstract
The uses of machine learning (ML) have snowballed in recent years. In many cases, ML models are highly complex, and their operation is beyond the understanding of human decision-makers. Nevertheless, some uses of ML models involve high-stakes and safety-critical applications. Explainable artificial intelligence (XAI) aims to help human decision-makers in understanding the operation of such complex ML models, thus eliciting trust in their operation. Unfortunately, the majority of past XAI work is based on informal approaches, that offer no guarantees of rigor. Unsurprisingly, there exists comprehensive experimental and theoretical evidence confirming that informal methods of XAI can provide human-decision makers with erroneous information. Logic-based XAI represents a rigorous approach to explainability; it is model-based and offers the strongest guarantees of rigor of computed…
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Taxonomy
TopicsScientific Computing and Data Management · Semantic Web and Ontologies
