cs.AI updates on arXiv.org 06月30日 12:14
Conceptual Topic Aggregation
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本文提出一种名为FAT-CAT的新方法,基于形式概念分析(FCA)进行主题建模,旨在提高大型文本数据集的主题聚合和可视化,通过案例分析证明其比现有技术更具解释性和意义。

arXiv:2506.22309v1 Announce Type: new Abstract: The vast growth of data has rendered traditional manual inspection infeasible, necessitating the adoption of computational methods for efficient data exploration. Topic modeling has emerged as a powerful tool for analyzing large-scale textual datasets, enabling the extraction of latent semantic structures. However, existing methods for topic modeling often struggle to provide interpretable representations that facilitate deeper insights into data structure and content. In this paper, we propose FAT-CAT, an approach based on Formal Concept Analysis (FCA) to enhance meaningful topic aggregation and visualization of discovered topics. Our approach can handle diverse topics and file types -- grouped by directories -- to construct a concept lattice that offers a structured, hierarchical representation of their topic distribution. In a case study on the ETYNTKE dataset, we evaluate the effectiveness of our approach against other representation methods to demonstrate that FCA-based aggregation provides more meaningful and interpretable insights into dataset composition than existing topic modeling techniques.

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主题建模 形式概念分析 FCA 文本数据 数据可视化
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