Native Explainability for Bayesian Confidence Propagation Neural Networks: A Framework for Trusted Brain-Like AI
Georgios Makridis, Georgios Fatouros, John Soldatos, George Katsis, Dimosthenis Kyriazis

TL;DR
This paper introduces a systematic explainability framework for Bayesian Confidence Propagation Neural Networks (BCPNN), addressing trust and transparency needs for edge AI deployment under new EU regulations.
Contribution
It proposes the first XAI taxonomy for BCPNN, introduces architecture-level explanation primitives, and offers configuration-based explanations for pre-deployment auditing.
Findings
Developed a taxonomy mapping BCPNN components to explanation types.
Created 16 architecture-level explanation primitives with algorithms.
Outlined a roadmap for industrial IoT integration and regulatory compliance.
Abstract
The EU Artificial Intelligence Act (Regulation 2024/1689), fully applicable to high-risk systems from August 2026, creates urgent demand for AI architectures that are simultaneously trustworthy, transparent, and feasible to deploy on resource-constrained edge devices. Brain-like neural networks built on the Bayesian Confidence Propagation Neural Network (BCPNN) formalism have re-emerged as a credible alternative to backpropagation-driven deep learning. They deliver state-of-the-art unsupervised representation learning, neuromorphic-friendly sparsity, and existing FPGA implementations that target edge deployment. Despite this momentum, no systematic framework exists for explaining BCPNN decisions -- a gap the present paper fills. We argue that BCPNN is, in the sense of Rudin's interpretable-by-design agenda, an inherently transparent model whose architectural primitives map directly onto…
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