A New Visualization of Group-Outliers in Unsupervised Learning

A. Chaibi, M. Lebbah, Hanene Azzag
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Abstract

This paper presents a new method for computing a quantitative score which can help in detecting cluster outliers using visualisation task. Self-organising map is incorporated in the proposed approach. The proposed method is evaluated on a number of datasets from UCI. Visualizations and experimental results show that GOF sensibly improves the results in term of cluster-outlier detection. The development of the SOM based visualization tool intends to provide additional exploratory data analysis techniques by offering a tool that allows effective extraction and exploration of patterns.
一种新的无监督学习中群体异常点的可视化方法
本文提出了一种计算定量分数的新方法,该方法可以帮助利用可视化任务检测聚类异常点。自组织映射被纳入到建议的方法中。该方法在UCI的多个数据集上进行了评估。可视化和实验结果表明,GOF在聚类异常值检测方面显著改善了结果。基于SOM的可视化工具的开发旨在通过提供一种允许有效提取和探索模式的工具来提供额外的探索性数据分析技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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