Deep Belief Neural Network (DBNN)-Based Categorization of Uncertain Data Streams

G. J. Raju, G. Raju
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引用次数: 0

Abstract

In the data mining era, the research field is paying attention to data stream mining, which offers a substantial influence on a variety of applications such as networking, wireless communications, education, economics, weather prediction, financial sector, and so on. Moreover, processing of this uncertain data stream faces two major challenges, which are computational difficulty and long processing time of data. Thus, to overcome this, this work proposes a technique that employs a deep belief neural network to categorize uncertain data streams. Initially, this work utilized a hybrid method that combines ensemble, grid, and density-dependent clustering approaches to acquire the local optimum value in uncertain data streams. Furthermore, for classification, a deep belief neural network (DBNN) has been used. As a result of mining, target semantics or chunks will be obtained from the classified data. The suggested technique performs well, and its effectiveness has been assessed in terms of time and accuracy. Thus, the proposed method outperforms the existing techniques.
基于深度信念神经网络(DBNN)的不确定数据流分类
在数据挖掘时代,数据流挖掘受到了研究领域的关注,它对网络、无线通信、教育、经济、天气预报、金融等领域的各种应用产生了实质性的影响。而且,这种不确定数据流的处理面临着计算难度大和数据处理时间长的两大挑战。因此,为了克服这一点,本工作提出了一种采用深度信念神经网络对不确定数据流进行分类的技术。最初,这项工作利用了一种混合方法,结合了集成、网格和密度相关聚类方法来获取不确定数据流中的局部最优值。此外,在分类方面,采用了深度信念神经网络(DBNN)。挖掘的结果是从分类数据中获得目标语义或块。所建议的技术性能良好,其有效性已在时间和准确性方面进行了评估。因此,所提出的方法优于现有的技术。
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