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An approach to discovering multi-temporal patterns and its application to financial databases

机译:一种发现多时间模式的方法及其在财务数据库中的应用

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Managerial decision-making processes often involve data of the time nature and need to understand complex temporal associations among events. Extending classical association rule mining approaches in consideration of time in order to obtain temporal information/knowledge is deemed important for decision support. which is nowadays one of the key Issues in business intelligence. This paper presents the notion of multi-temporal patterns with four different temporal predicates, namely before. during, equal and overlap, and discusses a number of related properties, based on which a mining algorithm is designed This enables Lis to effectively discover multi-temporal patterns in large-scale temporal databases by reducing the database scan in the generation of candidate patterns The proposed approach is then applied to stock markets, aimed at exploring possible associative movements between the stock markets of Chinese mainland and Hong Kong so as to provide helpful knowledge for investment decisions.
机译:管理决策过程通常涉及时间性质的数据,并且需要了解事件之间的复杂时间关联。为了获得时间信息/知识而扩展考虑时间的经典关联规则挖掘方法被认为对决策支持很重要。这是当今商业智能中的关键问题之一。本文提出了具有四个不同时态谓词(即之前)的多时态模式的概念。期间,相等和重叠,并讨论了许多相关属性,在此基础上设计了一种挖掘算法,这使Lis可以通过减少候选模式生成中的数据库扫描来有效地发现大型时态数据库中的多时间模式。建议的方法然后应用于股票市场,旨在探索中国大陆和香港股票市场之间可能的关联运动,从而为投资决策提供有用的知识。

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