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Improving Business Intelligence Based on Frequent Itemsets Using k-Means Clustering Algorithm

机译:使用k均值聚类算法改进基于频繁项集的商业智能

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摘要

In this world, each and every activity is enriched with lot of information. Business and other organization needs information for better decision making. Business Intelligence is a set of methods, process and technologies that transform raw data into meaningful and useful information. Some of the functions of business intelligence technologies are reporting, Online Analytical Processing, Online Transaction processing, data mining, process mining, complex event processing, business performance management, benchmarking and text mining. The applications of business intelligence includes E-commerce recommender system, approval of bank loan, credit/debit card fraud detection etc., In order to obtain business intelligence from large dataset there many techniques are available in data mining such as characterization, discrimination, frequent itemset mining, outlier analysis, cluster analysis and so on. In this proposed algorithm frequent itemset mining and clustering algorithm is used to extract the information from the dataset in order to make the decision making process more efficient and to improve the business intelligence.
机译:在这个世界上,每一项活动都富含大量信息。业务和其他组织需要信息以做出更好的决策。商业智能是将原始数据转换为有意义和有用的信息的一组方法,过程和技术。商业智能技术的一些功能包括报告,在线分析处理,在线事务处理,数据挖掘,流程挖掘,复杂事件处理,业务绩效管理,基准测试和文本挖掘。商业智能的应用包括电子商务推荐系统,银行贷款的批准,信用卡/借记卡欺诈检测等。为了从大型数据集获取商业智能,数据挖掘中有许多可用的技术,例如特征化,区分,频繁项目集挖掘,离群值分析,聚类分析等。该算法采用频繁项集挖掘和聚类算法从数据集中提取信息,以使决策过程更加有效,并提高了商业智能。

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