EVolutionary Independent DEtermiNistiC Explanation
Journal:
arXiv
Published Date:
Jan 20, 2025
Abstract
The widespread use of artificial intelligence deep neural networks in fields
such as medicine and engineering necessitates understanding their
decision-making processes. Current explainability methods often produce
inconsistent results and struggle to highlight essential signals influencing
model inferences. This paper introduces the Evolutionary Independent
Deterministic Explanation (EVIDENCE) theory, a novel approach offering a
deterministic, model-independent method for extracting significant signals from
black-box models. EVIDENCE theory, grounded in robust mathematical
formalization, is validated through empirical tests on diverse datasets,
including COVID-19 audio diagnostics, Parkinson's disease voice recordings, and
the George Tzanetakis music classification dataset (GTZAN). Practical
applications of EVIDENCE include improving diagnostic accuracy in healthcare
and enhancing audio signal analysis. For instance, in the COVID-19 use case,
EVIDENCE-filtered spectrograms fed into a frozen Residual Network with 50
layers improved precision by 32% for positive cases and increased the area
under the curve (AUC) by 16% compared to baseline models. For Parkinson's
disease classification, EVIDENCE achieved near-perfect precision and
sensitivity, with a macro average F1-Score of 0.997. In the GTZAN, EVIDENCE
maintained a high AUC of 0.996, demonstrating its efficacy in filtering
relevant features for accurate genre classification. EVIDENCE outperformed
other Explainable Artificial Intelligence (XAI) methods such as LIME, SHAP, and
GradCAM in almost all metrics. These findings indicate that EVIDENCE not only
improves classification accuracy but also provides a transparent and
reproducible explanation mechanism, crucial for advancing the trustworthiness
and applicability of AI systems in real-world settings.