CHOOSING SEEDS FOR SEMI-SUPERVISED GRAPH BASED CLUSTERING

C. Le, V. Vu, L. K. Oanh, Nguyen Thi Hai Yen
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Abstract

Though clustering algorithms have long history, nowadays clustering topic still attracts a lot of attention because of the need of efficient data analysis tools in many applications such as social network, electronic commerce, GIS, etc. Recently, semi-supervised clustering, for example, semi-supervised K-Means, semi-supervised DBSCAN, semi-supervised graph-based clustering (SSGC) etc., which uses side information, has received a great deal of attention. Generally, there are two forms of side information: seed form (labeled data) and constraint form (must-link, cannot-link). By integrating information provided by the user or domain expert, the semi-supervised clustering can produce expected results. In fact, clustering results usually depend on side information provided, so different side information will produce different results of clustering. In some cases, the performance of clustering may decrease if the side information is not carefully chosen. This paper addresses the problem of efficient collection of seeds for semi-supervised clustering, especially for graph based clustering by seeding (SSGC). The properly collected seeds can boost the quality of clustering and minimize the number of queries solicited from the user. For this purpose, we have developed an active learning algorithm (called SKMMM) for the seeds collection task, which identifies candidates to solicit users by using the K-Means and min-max algorithms. Experiments conducted on real data sets from UCI and a real collected document data set show the effectiveness of our approach compared with other methods.
基于半监督图聚类的种子选择
虽然聚类算法有着悠久的历史,但由于在社交网络、电子商务、地理信息系统等许多应用中都需要高效的数据分析工具,聚类话题仍然备受关注。近年来,利用侧信息的半监督聚类,如半监督K-Means、半监督DBSCAN、半监督基于图的聚类(SSGC)等受到了广泛的关注。通常,侧信息有两种形式:种子形式(标记数据)和约束形式(必须链接,不能链接)。通过整合用户或领域专家提供的信息,半监督聚类可以产生预期的结果。实际上,聚类结果通常取决于所提供的侧信息,因此不同的侧信息会产生不同的聚类结果。在某些情况下,如果不仔细选择副信息,聚类的性能可能会下降。本文研究了半监督聚类,特别是基于图的种子聚类(SSGC)的有效种子收集问题。正确收集种子可以提高聚类的质量,并最大限度地减少从用户请求的查询数量。为此,我们开发了一种用于种子收集任务的主动学习算法(称为SKMMM),该算法通过使用K-Means和min-max算法识别候选用户来招揽用户。在UCI的真实数据集和真实收集的文档数据集上进行的实验表明,与其他方法相比,我们的方法是有效的。
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