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Stock Data Clustering and Multiscale Trend Detection

机译:股票数据聚类和多尺度趋势检测

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摘要

Generally, trend detection algorithms over the data stream require expert assistance in some form. We present an unsupervised multiscale data stream algorithm which detects trends for evolving time series based on a data driver data stream. The raw stream data clustering algorithm is incremental, space dilating and has linear time complexity. The evolving stream is incrementally explored on a number of windows. Whenever a change occurs, we switch the analysis on this driver data stream in order to detect the new aggregated patterns and the new best selection of window widths among an exponential base set. The window widths are detected using a slightly modified version of an incremental SVD procedure. We apply this clustering algorithm to a free public NYSE stock exchange financial data feed, investigating incrementally the developing trends during the current crisis data from 2007 to 2009. The algorithm detected the changing widths of the trends as well as the trends themselves in the market.
机译:通常,数据流上的趋势检测算法需要某种形式的专家协助。我们提出了一种无监督的多尺度数据流算法,该算法基于数据驱动程序数据流来检测时间序列演变的趋势。原始流数据聚类算法是增量的,空间扩张的,并且具有线性时间复杂度。不断发展的信息流在多个窗口上逐渐被浏览。每当发生更改时,我们都将对此驱动程序数据流进行分析,以便检测新的聚合模式和指数基集中新的最佳窗口宽度选择。使用增量SVD程序的稍作修改的版本来检测窗口宽度。我们将此聚类算法应用于纽约证券交易所的免费公开财务数据供稿,以增量方式调查2007年至2009年当前危机数据期间的发展趋势。该算法可检测趋势的变化幅度以及市场本身的趋势。

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