A Deep Unsupervised Learning Algorithm for Dynamic Data Clustering

P. D. Pantula, S. Miriyala, K. Mitra
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Abstract

Owing to the generation of vast amount of unlabelled dynamic data and the need to analyze them, deep unsupervised learning based clustering algorithms are gaining importance in the field of data science. Since the task of automated feature extraction is proficiently combined with the machine learning models in deep unsupervised learning algorithms, they are identified to be superior as compared to conventional dynamic similarity measure based clustering methods. In this context, the authors present a recurrent neural network (RNN) based clustering algorithm optimization, where the vital information representing the dynamic data (or time-series data) is extracted first and subsequently clustered using a soft clustering algorithm. This methodology not only ensures dynamic component extraction in terms of static features but also clusters them efficiently using an evolutionary clustering algorithm called Neuro-Fuzzy C-Means (NFCM) clustering, which reduces the large-scale optimization problem of FCM to small-scale along-with identification of optimal number of clusters. The proposed algorithm has been implemented on three different test data sets collected from machine learning repository and it was found that the results are 98-100% accurate.
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动态数据聚类的深度无监督学习算法
由于大量未标记的动态数据的产生和分析的需要,基于深度无监督学习的聚类算法在数据科学领域变得越来越重要。由于自动特征提取任务与深度无监督学习算法中的机器学习模型熟练地结合在一起,因此与传统的基于动态相似性度量的聚类方法相比,它们被认为是优越的。在这种情况下,作者提出了一种基于循环神经网络(RNN)的聚类算法优化,其中首先提取代表动态数据(或时间序列数据)的重要信息,然后使用软聚类算法进行聚类。该方法不仅保证了静态特征的动态成分提取,而且使用一种称为神经模糊c均值(NFCM)聚类的进化聚类算法有效地对它们进行聚类,从而将FCM的大规模优化问题减少到小规模,同时确定了最优聚类数量。本文提出的算法已经在从机器学习存储库中收集的三个不同的测试数据集上实现,结果发现准确率为98-100%。
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