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A prefix tree-based model for mining association rules from quantitative temporal data

机译:基于前缀树的模型,用于从定量时间数据中挖掘关联规则

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There are two problems as we use conventional Boolean association rules mining algorithm to discover temporal association rules over the stock market to predict stock price variation. The first problem is that the discovered rules only consider associations between the presence and absence of variations of stock prices and the second problem is that the associations among stock price variations are within the same transaction day. For example, if stock A raises, then stock B raises the same day. This Boolean temporal association rule reveals no information of quantitative variations of stock prices and can only predict price trend in the same day. In this paper, we deal with the problem of mining temporal association rules in stock databases containing quantitative price variations to discover the associations among different transactions day. Our algorithm first employs data discretization concept to partition quantitative attributes into intervals and an adaptive a priori method that cooperates with time sliding window concept and prefix tree is developed to find quantitative temporal association rules. An example of such a rule might be "if stock A price variation raised 5% to 7% and stock B raised 2.5% to 5% the same day, then stock C will raise 0% to 2.5% in the next two days." In this case, the stock price variation is taking into consideration and the associated stock price variations belong to different transaction days. As compared with conventional methods, more useful results can be found from the proposed quantitative temporal association rules.
机译:我们使用传统的布尔协会规则挖掘算法有两个问题,以发现股票市场的时间关联规则预测股价变化。第一个问题是发现的规则只考虑股票价格的存在和缺乏之间的关联,第二个问题是股票价格变异之间的关联在同一交易日内。例如,如果股票筹集,那么股票B同一天筹集。这个布尔时间关联规则没有显示股票价格的量化变化的信息,并且只能在同一天预测价格趋势。在本文中,我们处理包含定量价格变化的库存数据库中挖掘时间关联规则的问题,以发现不同交易日之间的关联。我们的算法首先使用数据离散化概念来分区定量属性,分隔定量属性和与时间滑动窗口概念和前缀树协作的自适应先验方法以找到定量时间关联规则。这种规则的一个例子可能是“如果股票价格变化筹集5%至7%,并且在同一天筹集了2.5%至5%,则在接下来的两天将升级0%至2.5%。”在这种情况下,考虑股票价格变化,并且相关的股票价格变化属于不同的交易日。与传统方法相比,可以从所提出的定量时间关联规则中找到更有用的结果。

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