...
首页> 外文期刊>Journal of computer sciences >Mining of Datasets with an Enhanced Apriori Algorithm | Science Publications
【24h】

Mining of Datasets with an Enhanced Apriori Algorithm | Science Publications

机译:使用增强的APRIORI算法挖掘数据集|科学出版物

获取原文

摘要

> Problem statement: Classical association rules are mostly mining intra-transaction associations i.e., associations among items within the same transaction where the idea behind the transaction could be the items bought by the same customer on the same day. The goal of inter-transaction association rules is to represent the associations between various events found in different transactions. Approach: In this study, we break the barrier of transactions and extend the scope of mining association rules from traditional single-dimensional, intratransaction associations to N-Dimensional, inter-transaction associations. With the introduction of dimensional attributes, we lose the luxury of simple representational form of the classical association rules. Mining inter-transaction associations pose more challenges on efficient processing than mining intra-transaction associations because the number of potential association rules becomes extremely large after the boundary of transactions is broken. Results: Various tests also conducted using the data set collected from different Stock Exchange (SE).Various experimental results are reported by comparing with real life and synthetic datasets and we show the effectiveness of our work in generating rules and in finding acceptable set of rules under varying conditions. Conclusion/Recommendations: This study introduce the notion of N-Dimensional inter-transaction association rule, define its measurements: support and confidence and develop an efficient algorithm called Modified Apriori.
机译: > 问题声明:经典关联规则大多挖掘交易内部关联,即同一事务中的项目之间的关联,其中交易背后的想法可能是相同的项目客户在同一天。交易间关联规则的目标是表示不同交易中的各种事件之间的关联。 方法:在本研究中,我们打破了交易的障碍,并将传统的单维跨扫描关联的挖掘关联规则扩展到N维,交易交际关联。随着尺寸属性的引入,我们失去了古典关联规则的简单代表形式的奢侈品。挖掘交易交际关联在高效处理方面的挑战比挖掘内部交易协会在挖掘内部造成更多挑战,因为交易边界破裂后潜在关联规则的数量变得非常大。 结果:使用从不同的证券交易所(SE)收集的数据集进行的各种测试通过与现实生活和合成数据集进行比较,并展示了我们在产生规则方面的工作的有效性并在不同条件下找到可接受的规则集。 结论/建议:本研究介绍了N维交易关联规则的概念,定义了其测量:支持和置信度,并开发一种称为修改的APRiori的有效算法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号