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Correlating burst events on streaming stock market data

机译:在流式股票市场数据上关联突发事件

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We address the problem of monitoring and identification of correlated burst patterns in multi-stream time series databases. We follow a two-step methodology: first we identify the burst sections in our data and subsequently we store them for easy retrieval in an efficient in-memory index. The burst detection scheme imposes a variable threshold on the examined data and takes advantage of the skewed distribution that is typically encountered in many applications. The detected bursts are compacted into burst intervals and stored in an interval index. The index facilitates the identification of correlated bursts by performing very efficient overlap operations on the stored burst regions. We present the merits of the proposed indexing scheme through a thorough analysis of its complexity. We also manifest the real-time response of our burst indexing technique, and demonstrate the usefulness of the approach for correlating surprising volume trading events using historical stock data of the NY stock exchange. While the focus of this work is on financial data, the proposed methods and data-structures can find applications for anomaly or novelty detection in telecommunication, network traffic and medical data.
机译:我们解决了在多流时间序列数据库中监视和识别相关突发模式的问题。我们遵循两步方法:首先,在数据中识别突发部分,然后将它们存储起来,以便在有效的内存索引中轻松检索。突发检测方案在检查的数据上施加了可变阈值,并利用了许多应用中通常遇到的偏斜分布。将检测到的突发压缩为突发间隔,并存储在间隔索引中。该索引通过对存储的突发区域执行非常有效的重叠操作,有助于识别相关的突发。通过全面分析其复杂性,我们介绍了所提出的索引方案的优点。我们还展示了突发索引技术的实时响应,并展示了使用纽约证券交易所的历史股票数据关联令人惊讶的批量交易事件的方法的有用性。尽管这项工作的重点是金融数据,但是建议的方法和数据结构可以在电信,网络流量和医疗数据中发现异常或新颖性检测的应用。

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