Litcius/Paper detail

TREPAN Reloaded: A Knowledge-Driven Approach to Explaining Black-Box Models

Roberto Confalonieri, Tillman Weyde, Brosvic Trueman R., Moscoso del Prado Martín Fermín

2020Frontiers in artificial intelligence and applications22 citationsDOIOpen Access PDF

Abstract

Explainability in Artificial Intelligence has been revived as a topic of active research by the need of conveying safety and trust to users in the ‘how’ and ‘why’ of automated decision-making. Whilst a plethora of approaches have been developed for post-hoc explainability, only a few focus on how to use domain knowledge, and how this influences the understandability of global explanations from the users’ perspective. In this paper, we show how ontologies help the understandability of global post-hoc explanations, presented in the form of symbolic models. In particular, we build on TREPAN, an algorithm that explains artificial neural networks by means of de- cision trees, and we extend it to include ontologies modeling domain knowledge in the process of generating explanations. We present the results of a user study that measures the understandability of deci- sion trees using a syntactic complexity measure, and through time and accuracy of responses as well as reported user confidence and understandability. The user study considers domains where explana- tions are critical, namely, in finance and medicine. The results show that decision trees generated with our algorithm, taking into account domain knowledge, are more understandable than those generated by standard TREPAN without the use of ontologies.

Topics & Concepts

Black boxBox modelEpistemologyMathematical economicsArtComputer scienceMathematicsPhilosophyArtificial intelligencePhysicsAtmospheric sciencesExplainable Artificial Intelligence (XAI)Scientific Computing and Data ManagementTopic Modeling