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Data Stream Classification Based on the Gamma Classifier

机译:基于伽玛分类器的数据流分类

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摘要

The ever increasing data generation confronts us with the problem of handling online massive amounts of information. One of the biggest challenges is how to extract valuable information from these massive continuous data streams during single scanning. In a data stream context, data arrive continuously at high speed; therefore the algorithms developed to address this context must be efficient regarding memory and time management and capable of detecting changes over time in the underlying distribution that generated the data. This work describes a novel method for the task of pattern classification over a continuous data stream based on an associative model. The proposed method is based on the Gamma classifier, which is inspired by the Alpha-Beta associative memories, which are both supervised pattern recognition models. The proposed method is capable of handling the space and time constrain inherent to data stream scenarios. The Data Streaming Gamma classifier (DS-Gamma classifier) implements a sliding window approach to provide concept drift detection and a forgetting mechanism. In order to test the classifier, several experiments were performed using different data stream scenarios with real and synthetic data streams. The experimental results show that the method exhibits competitive performance when compared to other state-of-the-art algorithms.
机译:不断增长的数据生成使我们面临在线处理大量信息的问题。最大的挑战之一是如何在单次扫描期间从这些庞大的连续数据流中提取有价值的信息。在数据流上下文中,数据连续高速到达;因此,为解决此问题而开发的算法必须在存储和时间管理方面高效,并且能够检测生成数据的基础分布随时间的变化。这项工作描述了一种新方法,用于基于关联模型的连续数据流上的模式分类任务。所提出的方法基于Gamma分类器,该分类器受Alpha-Beta关联存储器的启发,两者都是有监督的模式识别模型。所提出的方法能够处理数据流场景固有的空间和时间限制。数据流伽玛分类器(DS-Gamma分类器)实现了滑动窗口方法,以提供概念漂移检测和遗忘机制。为了测试分类器,使用具有真实和合成数据流的不同数据流方案进行了几次实验。实验结果表明,与其他最新算法相比,该方法具有竞争优势。

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