基于自编码器的演化数据流快速在线聚类算法

Dazheng Gao
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引用次数: 0

摘要

在大数据时代,越来越多的物联网设备正在产生大量高维、实时、动态的数据流。因此,人们对如何有效和高效地对这些数据进行聚类越来越感兴趣。虽然已经提出了一些流行的两阶段数据流聚类算法,但这些算法在面对现实数据流时仍然存在一些难以解决的问题:高维数据流处理能力差,难以有效降维;集群过程缓慢,难以满足实时性要求;还有太多手动定义的参数,使得处理不断变化的数据流变得困难。提出了一种基于自编码器的演化数据流快速在线聚类算法(AFOCEDS)。该算法采用堆栈去噪自编码器来降低数据维数,采用多线程方式来提高响应速度,采用参数自动更新机制来应对不断变化的数据流。在几个实际数据流上的实验表明,AFOCEDS在有效性和速度上都优于其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An autoencoder-based fast online clustering algorithm for evolving data stream
In the era of Big Data, more and more IoT devices are generating huge amounts of high-dimensional, real-time and dynamic data streams. As a result, there is a growing interest in how to cluster this data effectively and efficiently. Although a number of popular two-stage data stream clustering algorithms have been proposed, these algorithms still have some problems that are difficult to solve in the face of real-world data streams: poor handling of high-dimensional data streams and difficulty in effective dimensionality reduction; a slow clustering process that makes it difficult to meet real-time requirements; and too many manually defined parameters that make it difficult to cope with evolving data streams. This paper proposes an autoencoder-based fast online clustering algorithm for evolving data stream(AFOCEDS). The algorithm uses a stacked denoising autoencoder to reduce the dimensionality of the data, a multi-threaded approach to improve response speed, and a mechanism to automatically update parameters to cope with evolving data streams. The experiments on several realistic data streams show that AFOCEDS outperforms other algorithms in terms of effectiveness and speed.
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