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Cluster Structure Inference Based on Clustering Stability with Applications to Microarray Data Analysis

机译:基于聚类稳定性的聚类结构推断及其在微阵列数据分析中的应用

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This paper focuses on the stability-based approach for estimating the number of clusters in microarray data. The cluster stability approach amounts to performing clustering successively over random subsets of the available data and evaluating an index which expresses the similarity of the successive partitions obtained. We present a method for automatically estimating by starting from the distribution of the similarity index. We investigate how the selection of the hierarchical clustering (HC) method, respectively, the similarity index, influences the estimation accuracy. The paper introduces a new similarity index based on a partition distance. The performance of the new index and that of other well-known indices are experimentally evaluated by comparing the "true" data partition with the partition obtained at each level of an HC tree. A case study is conducted with a publicly available Leukemia dataset.
机译:本文着重于基于稳定性的方法,用于估计微阵列数据中的簇数。聚类稳定性方法等于对可用数据的随机子集连续执行聚类,并评估表示获得的连续分区的相似性的索引。我们提出了一种从相似性指数的分布开始自动估算的方法。我们调查分别选择相似性指标的层次聚类(HC)方法如何影响估计精度。本文介绍了一种基于分区距离的新相似度指标。通过将“真实”数据分区与在HC树的每个级别获得的分区进行比较,以实验方式评估了新索引和其他知名索引的性能。案例研究是使用公开可用的白血病数据集进行的。

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