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A study on time based association rule mining on spatial-temporal data for intelligent transportation applications

机译:智能交通应用中基于时间的时空数据关联规则挖掘研究

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Discovery of association rules is one of the very important tasks in data mining. So far Conventional Association Rule Mining (CARM) has proven its importance in medical, biology and business fields. As it is unable to extract time based association rules, it substantiated to unsuitable for intelligent transportation applications. The CARM extended to spatiotemporal processes, generating time based Association Rule Mining (TARM) which is used to extract time based association rules. TARM found suitable for intelligent transportation applications such as traffic prediction, travel time estimation, congestion prediction etc. We have defined TARM and time related class association rules, based on spatio-temporal database. This paper presents an analysis on different data mining algorithms, soft and evolution computation techniques which are focused on extracting transactional and time based association rules.
机译:关联规则的发现是数据挖掘中非常重要的任务之一。到目前为止,常规协会规则挖掘(CARM)已证明其在医学,生物学和商业领域中的重要性。由于无法提取基于时间的关联规则,因此它证明不适合智能交通应用。 CARM扩展到时空过程,生成基于时间的关联规则挖掘(TARM),用于提取基于时间的关联规则。发现TARM适用于智能交通应用,例如交通预测,旅行时间估计,拥堵预测等。我们基于时空数据库定义了TARM和与时间相关的类关联规则。本文对不同的数据挖掘算法,软件和演化计算技术进行了分析,这些技术着重于提取基于事务和时间的关联规则。

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