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Variations to incremental growing neural gas algorithm based on label maximization

机译:基于标签最大化的增量生长神经气体算法的变体

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Neural clustering algorithms show high performance in the general context of the analysis of homogeneous textual dataset. This is especially true for the recent adaptive versions of these algorithms, like the incremental growing neural gas algorithm (IGNG) and the labeling maximization based incremental growing neural gas algorithm (IGNG-F). In this paper we highlight that there is a drastic decrease of performance of these algorithms, as well as the one of more classical algorithms, when a heterogeneous textual dataset is considered as an input. Specific quality measures and cluster labeling techniques that are independent of the clustering method are used for the precise performance evaluation. We provide new variations to incremental growing neural gas algorithm exploiting in an incremental way knowledge from clusters about their current labeling along with cluster distance measure data. This solution leads to significant gain in performance for all types of datasets, especially for the clustering of complex heterogeneous textual data.
机译:神经聚类算法在分析同类文本数据集的一般上下文中显示出高性能。对于这些算法的最新自适应版本尤其如此,例如增量增长的神经气体算法(IGNG)和基于标记最大化的增量增长的神经气体算法(IGNG-F)。在本文中,我们着重指出,当将异构文本数据集视为输入时,这些算法以及更经典的算法之一的性能将急剧下降。独立于聚类方法的特定质量度量和聚类标签技术可用于精确的性能评估。我们为增量增长的神经气体算法提供了新的变体,以增量方式利用来自群集的有关其当前标记的知识以及群集距离测量数据。该解决方案可显着提高所有类型的数据集的性能,尤其是对于复杂的异构文本数据的聚类而言。

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