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Extraction of Association Rules from Tobacco Smoke Effect on the Placenta Microarray Dataset using Gene Ontology Based Optmized Association Rule Mining

机译:使用基于基因本体的优化关联规则挖掘从烟草烟雾对胎盘微阵列数据集的关联规则中提取关联规则

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Gene Ontology (GO) is said to be the most popular bio-ontology that describes the gene products and its characteristics. For describing the gene product and its characteristics the three terms are used, namely, biological process, molecular function and cellular component. GO annotation is the term that is derived from kind of sub-ontologies at various stages. It is a vital source that describes the relationship between the three sub-ontologies. For effective information finding the data mining approach names as association rule mining, which is modified for mining the relationships from various ontologies from GO annotation data. For mining the relationship the abstractions are mandatory. In the existing system, GO-WAR (GeneeOntology-based Weighted Association Rules) methodology was proposed by using a FP - growth algorithm for extracting weighted association rules. GO-WAR is could extract association rules with a high information(IC)without loss of support and confidence from a dataset of annotated data. However, the performance was low for extracting weighted association rules. This paper introduces the new methodology GOPAR (Gene Ontology based Predictive Association Rule) to eliminate the drawback of GO-WAR. GOPAR avoids the repeated association rule and generating the predictive grouped rules, the grouping of association rules strictly eliminates multiple GO terms. Further, the paper presents the GOPOAR (Gene Ontology based Predictive Optimized Association Rule) approach is to achieve a best optimal solution and find the missing values of predictive association rule. Based on the experimental result the GOPOAR extracted more number of significant rules also providing truthful and better optimal results.
机译:基因本体论(GO)被认为是描述基因产物及其特征的最流行的生物本体论。为了描述基因产物及其特性,使用了三个术语,即生物学过程,分子功能和细胞成分。 GO注释是从各个阶段的子本体类型派生而来的术语。它是描述三个子本体之间关系的重要资料。为了获得有效的信息,将数据挖掘方法名称称为关联规则挖掘,将其进行了修改以从GO注释数据中挖掘各种本体中的关系。为了挖掘关系,抽象是强制性的。在现有系统中,提出了一种利用FP-生长算法提取加权关联规则的GO-WAR(基于基因本体论的加权关联规则)的方法。 GO-WAR可以从具有注释的数据集中提取具有高信息(IC)的关联规则,而不会失去支持和信心。但是,提取加权关联规则的性能较低。本文介绍了新的方法GOPAR(基于基因本体的预测关联规则),以消除GO-WAR的缺点。 GOPAR避免了重复的关联规则并生成预测性分组规则,而关联规则的分组则严格消除了多个GO项。此外,本文提出了GOPOAR(基于基因本体的预测优化关联规则)方法,旨在获得最佳的优化解决方案,并找到预测关联规则的缺失值。根据实验结果,GOPOAR提取了更多数量的重要规则,这些规则也提供了真实且更好的最佳结果。

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