基于本体和规则的并行频繁模式挖掘研究

Chenxi Yi, Ming Sun
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引用次数: 0

摘要

经过十年的发展,ILP在数据挖掘领域得到了广泛的应用,也是当今研究的热点。但是ILP也有很多缺点,比如它是一个NP问题,又是一个独立的算法,所以当数据量大的时候,效率就比较低。为了解决这一问题,本文提出了基于本体和知识的频繁模式表达和异构知识库。基于以上两点改进,可以实现ILP的并行实现。
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Research on parallel frequent pattern mining based on ontology and rules
After ten years of development, ILP has been widely used in the field of data mining, it is also a hot topic in today's research. But ILP also has many disadvantages, such as it is a NP problem, but also a stand-alone algorithm, so that when the data is large, the efficiency is relatively low. To solve this problem, in this article, the new expression of frequent patterns as well as the heterogeneous knowledge base depending on ontology and knowledge are proposed. Based on the above two improvements, the parallel implementation of ILP can be realized.
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