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首页> 外文期刊>Neural computing & applications >Identifying data streams anomalies by evolving spiking restricted Boltzmann machines
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Identifying data streams anomalies by evolving spiking restricted Boltzmann machines

机译:通过演化尖刺限制的Boltzmann机器来识别数据流异常

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摘要

Data streams are characterized by high volatility, and they drastically change in an unpredictable way over time. In the typical case, newer data are the most important, as the concept of aging is based on their timing. These flows require real-time processing in order to extract meaningful information that will allow for essential and targeted responses to changing circumstances. Knowledge mining is a real-time process performed on a subset of the data streams, which contains a small but recent part of the observations. Timely security requirements call for further quest of optimal approaches, capable of improving the reliability and the accuracy of the employed classifiers. This research introduces a real-time evolving spiking restricted Boltzmann machine approach, for efficient anomaly detection in data streams. Testing has proved that the proposed algorithm maximizes the classification accuracy and at the same time minimizes the computational resources requirements. A comparative analysis has shown that it outperforms other data flow analysis algorithms.
机译:数据流的特征在于波动性高,并且它们随着时间的推移以不可预测的方式变化。在典型的情况下,较新的数据是最重要的,因为老化的概念是基于他们的时机。这些流程需要实时处理,以提取有意义的信息,以允许对不断变化的情况进行必要和有针对性的响应。知识挖掘是对数据流子集执行的实时过程,其中包含一个小但最近的观察部分。及时的安全要求呼叫进一步寻求最佳方法,能够提高所采用的分类器的可靠性和准确性。本研究介绍了一个实时演化的尖峰限制博尔兹曼机方法,用于数据流中有效的异常检测。证明了该算法最大限度地提高了分类精度,同时最大限度地减少了计算资源要求。比较分析表明它优于其他数据流分析算法。

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