基于加权顺序挖掘方法的二值预测

Shuchuan Lo
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引用次数: 17

摘要

本文提出了一种加权二值序列方法来预测第二天的顾客光顾状况。利用关联规则进行序列数据挖掘的研究大多集中在模式或规则生成的算法和计算效率上。但是很少有人考虑序列数据的时间价值。在对时间序列数据进行分析时,可取的做法是更重视最近的观测,而不是远程观测。在本文中,我们提出了一个时间加权的关联算法概念来挖掘二进制时间序列数据。加权二值序列算法在从二值时间序列数据中寻找最长频繁模式时,给予最近数据更多的权重。有两种加权方法;动态长度加权和固定长度加权。将这两种算法与未加权算法进行比较,以显示时间值对预测精度的影响。本文给出的实际Web站点应用程序的性能结果表明,时间加权顺序算法总体上优于非加权顺序算法。
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Binary prediction based on weighted sequential mining method
This paper presents a weighted-binary-sequential method to predict the status of customer patronage for the next day. Most of the research using association rules to mine sequential data focus on the algorithms and computing efficiency of pattern or rule generation. But few of them consider the time value of the sequential data. It is desirable to weight recent observations more heavily than remote observations in the analysis of time-series data. In this paper, we address a time-weighted concept on association algorithm to mine the binary-time-series data. The weighted binary sequence algorithm gives more weight on the recent data in finding the longest frequent patterns from binary-time-series data. There are two weighting methods; dynamic-length weighting and fixed-length weighting. Both algorithms are compared to the un-weighted algorithm to show how time value influences the prediction accuracy. Some performance results with a real-life Web site application given in this paper show that time-weighted sequential algorithms are generally superior to un-weighted sequential algorithm.
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