Framework for Progressive Knowledge Fusion in Large Language Models Through Structured Conceptual Redundancy Analysis
Joseph Sakau, Evander Kozlowski, Roderick Thistledown, Basil, Steinberger

TL;DR
This paper introduces a framework that restructures redundancies in large language models to improve efficiency, interpretability, and robustness, enabling better performance in complex tasks.
Contribution
It presents a novel approach using clustering and dynamic thresholding to optimize latent knowledge organization in large models.
Findings
Enhanced memory efficiency and faster inference.
Improved interpretability and semantic cluster alignment.
Reduced resource consumption with better task performance.
Abstract
The organization of latent knowledge within large-scale models poses unique challenges when addressing overlapping representations and optimizing contextual accuracy. Conceptual redundancies embedded across layers often result in inefficiencies that affect both computational demands and task-specific outcomes. A framework was proposed to restructure these redundancies through advanced clustering techniques and dynamic thresholding, ensuring that critical semantic relationships are preserved while removing unnecessary overlaps. Evaluations revealed improved memory efficiency and faster inference times, alongside better alignment in latent knowledge clusters that enhanced interpretability. Improvements in error rates and adversarial robustness suggest that restructuring redundancies has broader implications for increasing model reliability across diverse applications. Comparative analyses…
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Taxonomy
TopicsSemantic Web and Ontologies
MethodsAttentive Walk-Aggregating Graph Neural Network
