TDCC:一种面向不确定数据的可信深度信度聚类方法

TDCC: A Trustworthy Deep Credal Clustering Method for Uncertain Data

IEEE Transactions on Cybernetics · 2026
被引 0
ABS 3

中文导读

提出一种融合深度神经网络与Dempster-Shafer证据理论的可信深度信度聚类框架,通过信度聚类结构避免将模糊样本强行归入特定簇,减少错误并提升模型可信度,实验表明聚类效果更优。

Abstract

Deep clustering has achieved remarkable success in handling various types of real-world data, but often suffers from overconfidence, forcing ambiguous samples into specific clusters even when the evidence is insufficient. To address this limitation, we propose trustworthy deep credal clustering, a novel framework for uncertainty that integrates deep neural networks with the Dempster-Shafer Theory of evidence (DST). This method leverages credal cluster structures to enhance the model's robustness against uncertain data. Our model can refrain from assigning uncertain samples to a specific cluster, thereby reducing errors and enhancing the model's trustworthiness. Theoretically, we derive closed-form solutions for updating cluster memberships and prototypes, employing a coordinate descent strategy to rigorously optimize the objective function. Experiments on various datasets confirm that our proposed trustworthy clustering method leads to enhanced overall clustering effectiveness. Code is available at https://github.com/H1nkik/Trustworthy-Clustering.

聚类分析不确定性数据可信机器学习模式识别