UNCA: A Neutrosophic-Based Framework for Robust Clustering and Enhanced Data Interpretation
D. Dhinakaran, S. Edwin Raja, S. Gopalakrishnan, D. Selvaraj, S. D., Lalitha

TL;DR
UNCA introduces a neutrosophic-based clustering framework that improves accuracy, interpretability, and robustness in handling complex datasets with uncertainties, outperforming traditional methods across multiple metrics.
Contribution
The paper presents UNCA, a novel neutrosophic clustering algorithm that integrates similarity filtering, dynamic visualization, and refined cluster assignment techniques for enhanced data analysis.
Findings
Achieved higher clustering metrics than traditional methods.
Demonstrated robustness and interpretability in complex datasets.
Outperformed FCM, NCM, and KNCM in multiple evaluations.
Abstract
Accurately representing the complex linkages and inherent uncertainties included in huge datasets is still a major difficulty in the field of data clustering. We address these issues with our proposed Unified Neutrosophic Clustering Algorithm (UNCA), which combines a multifaceted strategy with Neutrosophic logic to improve clustering performance. UNCA starts with a full-fledged similarity examination via a {\lambda}-cutting matrix that filters meaningful relationships between each two points of data. Then, we initialize centroids for Neutrosophic K-Means clustering, where the membership values are based on their degrees of truth, indeterminacy and falsity. The algorithm then integrates with a dynamic network visualization and MST (Minimum Spanning Tree) so that a visual interpretation of the relationships between the clusters can be clearly represented. UNCA employs SingleValued…
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