Deep Belief Networks Oriented Clustering

Qi Yang, Hongjun Wang, Tianrui Li, Yan Yang
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引用次数: 3

Abstract

Deep learning has been popular for a few years, and it shows great capability on unsupervised leaning of representation. Deep belief network consists of multi layers of restricted Boltzmann machine(RBM) and a deep auto-encoder, which uses a stack architecture learning feature layer by layer. The learning rule is that one deeper layer learns more complex representations, which are the high level features of the input data, from the representations learnt by the layer before. Fuzzy C-Means(FCM) is one of the most popular clustering algorithms, which allows one piece of data belong to several clusters. In this paper the authors propose a novel clustering model, and introduce a novel clustering technique(DBNOC) which combines deep belief network and fuzzy c-means. The main idea is that: first, it clusters with the high level representations learnt by stacked RBM to produce the initial cluster center, then it uses the fine-tune step including one center holding clustering algorithm and deep auto-encoder to optimize the cluster center and membership between input data and every cluster by cross iteration. The authors use FCM clustering algorithm to fulfill the model and do experiment on both low dimensional datasets and high dimensional datasets. The experiment results suggest that the proposed deep belief network oriented clustering method is better than the standard K-Means and FCM algorithm on the test datasets. Even on high dimensional datasets, the DBNOC clustering method show more generalization. What's more, the proposed model is suitable both in theoretical and practical.
面向聚类的深度信念网络
深度学习已经流行了几年,它在表示的无监督学习方面表现出了很强的能力。深度信念网络由多层受限玻尔兹曼机(RBM)和深度自编码器组成,深度自编码器采用层叠结构逐层学习特征。学习规则是,更深的一层从前一层学习到的表示中学习更复杂的表示,即输入数据的高级特征。模糊c均值(FCM)是目前最流行的聚类算法之一,它允许一个数据属于多个聚类。本文提出了一种新的聚类模型,并介绍了一种结合深度信念网络和模糊c均值的聚类技术(DBNOC)。该方法的主要思想是:首先利用堆叠RBM学习到的高级表示进行聚类,产生初始聚类中心,然后使用包含一个中心保持聚类算法和深度自编码器的微调步骤,通过交叉迭代优化输入数据与每个聚类之间的聚类中心和隶属度。采用FCM聚类算法实现模型,并分别在低维数据集和高维数据集上进行了实验。实验结果表明,本文提出的面向深度信念网络的聚类方法在测试数据集上优于标准K-Means和FCM算法。即使在高维数据集上,DBNOC聚类方法也表现出更强的泛化能力。该模型在理论和实践上都是适用的。
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