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Combined Mining Approach to Generate Patterns for Complex Data

机译:组合挖掘方法生成复杂数据的模式

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In Data mining applications, which often involve complex data like multiple heterogeneous data sources, user preferences, decision-making actions and business impacts etc., the complete useful information cannot be obtained by using single data mining method in the form of informative patterns as that would consume more time and space, if and only if it is possible to join large relevant data sources for discovering patterns consisting of various aspects of useful information. We consider combined mining as an approach for mining informative patterns from multiple data-sources or multiple-features or by multiple-methods as per the requirements. In combined mining approach, we applied Lossy-counting algorithm on each data-source to get the frequent data item-sets and then get the combined association rules. In multi-feature combined mining approach, we obtained pair patterns and cluster patterns and then generate incremental pair patterns and incremental cluster patterns, which cannot be directly generated by the existing methods. In multi-method combined mining approach, we combine FP-growth and Bayesian Belief Network to make a classifier to get more informative knowledge
机译:在数据挖掘应用程序中,通常涉及复杂数据,例如多个异构数据源,用户首选项,决策行动和业务影响等,通过使用单一数据挖掘方法无法以信息模式的形式获得完整有用的信息,因为当且仅当可能合并大型相关数据源以发现由有用信息的各个方面组成的模式时,这将消耗更多的时间和空间。我们认为组合挖掘是一种根据需求从多个数据源或多个功能或通过多种方法挖掘信息模式的方法。在组合挖掘方法中,我们在每个数据源上应用有损计数算法,以获取频繁的数据项集,然后获得组合的关联规则。在多特征组合挖掘方法中,我们获得了配对模式和聚类模式,然后生成了增量配对模式和增量聚类模式,而现有方法无法直接生成这些模式。在多方法组合挖掘方法中,我们将FP增长和贝叶斯信念网络相结合,进行分类,以获取更多信息知识。

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