A Temporal Type-2 Fuzzy System for Time-dependent Explainable Artificial Intelligence
Mehrin Kiani, Javier Andreu-Perez, Hani Hagras

TL;DR
This paper introduces a novel Temporal Type-2 Fuzzy Logic System for explainable AI that models time-dependent uncertainties, significantly improving classification accuracy and providing insights into process evolution over time.
Contribution
The work presents a new temporal fuzzy system that incorporates time-dependent membership functions, enhancing explainability and accuracy in dynamic environments compared to existing non-temporal models.
Findings
Achieved a mean recall of 95.40% with the proposed system
Outperformed standard non-temporal XAI systems by up to 19.04% in recall
Enabled prediction of likely future rules in time-dependent processes
Abstract
Explainable Artificial Intelligence (XAI) is a paradigm that delivers transparent models and decisions, which are easy to understand, analyze, and augment by a non-technical audience. Fuzzy Logic Systems (FLS) based XAI can provide an explainable framework, while also modeling uncertainties present in real-world environments, which renders it suitable for applications where explainability is a requirement. However, most real-life processes are not characterized by high levels of uncertainties alone; they are inherently time-dependent as well, i.e., the processes change with time. In this work, we present novel Temporal Type-2 FLS Based Approach for time-dependent XAI (TXAI) systems, which can account for the likelihood of a measurement's occurrence in the time domain using (the measurement's) frequency of occurrence. In Temporal Type-2 Fuzzy Sets (TT2FSs), a four-dimensional (4D)…
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