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A TIME-INTERVAL SEQUENTIAL PATTERN CHANGE DETECTION METHOD

机译:时间间隔时序模式变化检测方法

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摘要

Several studies have focused on mining changes in different time-period databases. Analyzing these change behaviors provides useful information for managers to develop better marketing strategies and decision making. Although some researchers have developed efficient methods for association rule change detection, no attempt has been made to analyze time-interval sequential pattern changes in databases collected over time. Therefore, this research proposes a time-interval sequential pattern change detection framework to derive the change trends in customer behaviors in two periods. First, two time-interval sequential pattern sets are generated from two time-period databases respectively using the proposed DTI-Apriori algorithm. Different from previous mining methods that require users to manually define a set of time-interval ranges in advance, the DTI-Apriori algorithm automatically arranges the time-interval range and then generates time-interval sequential patterns. The degree of change for each pair of time interval sequential patterns from different time periods is evaluated next. Based on the degree of change, a time-interval sequential pattern is clarified as one of the following three change types: an emerging time-interval sequential pattern, an unexpected time-interval sequential pattern, or an added/perished time-interval sequential pattern. Significant change patterns are returned to users for further analysis if the degree of change is large enough.
机译:一些研究集中在挖掘不同时间数据库中的变化。分析这些变化行为为经理提供了有用的信息,以帮助他们制定更好的营销策略和决策。尽管一些研究人员已经开发了用于关联规则更改检测的有效方法,但尚未尝试分析随时间推移收集的数据库中的时间间隔顺序模式更改。因此,本研究提出了一种时间间隔顺序模式变化检测框架,以推导两个时期内客户行为的变化趋势。首先,分别使用建议的DTI-Apriori算法从两个时间数据库中生成两个时间间隔顺序模式集。与之前需要用户手动定义一组时间间隔范围的挖掘方法不同,DTI-Apriori算法会自动排列时间间隔范围,然后生成时间间隔顺序模式。接下来评估来自不同时间段的每对时间间隔顺序模式的变化程度。根据更改的程度,将时间间隔顺序模式阐明为以下三种更改类型之一:新兴的时间间隔顺序模式,意外的时间间隔顺序模式或增加/消失的时间间隔顺序模式。如果更改程度足够大,则会将重要的更改模式返回给用户以进行进一步分析。

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