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Guided cluster discovery with Markov model

机译:马尔可夫模型指导的集群发现

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摘要

Cluster discovery is an essential part of many data mining applications. While cluster discovery process is mainly unsupervised in nature, it can often be aided by a small amount of labeled data. A probabilistic model on the clustering structure is adopted and a novel unified energy equation for clustering that incorporates both labeled data and unlabeled data is introduced. This formulation is inspired by a force-field model integrating labeling constraint on labeled data and similarity information on unlabeled data for joint estimation. Experimental results show that good clusters can be identified using small amount of labeled data.
机译:集群发现是许多数据挖掘应用程序的重要组成部分。尽管群集发现过程本质上主要是无监督的,但通常可以通过少量标记数据来辅助它。采用了一种基于聚类结构的概率模型,并引入了一个新的统一的能量聚类方程。此公式是受力场模型启发的,该模型集成了对标记数据的标记约束和对未标记数据的相似性信息进行联合估计。实验结果表明,可以使用少量标记数据来识别良好的聚类。

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