| Title | Formally Explaining Neural Network Classification |
| Publication Type | Conference Paper |
| Year of Publication | 2026 |
| Authors | Sharygina, Natasha, Labbaf Faezeh, Leopardi Fabrizio, Kolárik Tomáš, Fedyukovich Grigory, and Wand Michael |
| Conference Name | FM 2026 |
| Abstract | Neural networks (NNs) are the core of AI-based technologies. However, the degree of reliability in performing the task is an open problem. The explainability of a central task of NNs, classification, is of immense importance. While at the rise of AI-based reasoning, explainability of the NN classification has mostly been done using statistical methods, nowadays, a more reliable trend of formal logic-based methods is gaining popularity. The advantage of the formal approach is that it gives strict and provable guarantees of the classification. Formal methods is a mature field that has delivered a number of efficient computational solutions already applied in the analysis of software and hardware systems. Formal explainability methods naturally have the ability to reuse existing techniques and tools for a newly emerging field of formal explainability of NN classification. |





