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通用数据处理系统的设计与实现
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作者 任长安 贾东风 《福建电脑》 2009年第4期145-146,共2页
随着社会信息化的日益加强,传统的数据处理系统存在专用性太强、安全性不高、数据共享性差等缺陷,不利于企业应用。为了充分利用企业信息资产所带来的优势,本文主要论述了一个通用数据处理系统的设计与实现过程,从而帮助企业简单、快捷... 随着社会信息化的日益加强,传统的数据处理系统存在专用性太强、安全性不高、数据共享性差等缺陷,不利于企业应用。为了充分利用企业信息资产所带来的优势,本文主要论述了一个通用数据处理系统的设计与实现过程,从而帮助企业简单、快捷的组织、处理数据信息并将其直观展现。 展开更多
关键词 通用数据处理 系统 数据模板 结果集展现 结果集分析
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Similarity measure design for high dimensional data 被引量:3
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作者 LEE Sang-hyuk YAN Sun +1 位作者 JEONG Yoon-su SHIN Seung-soo 《Journal of Central South University》 SCIE EI CAS 2014年第9期3534-3540,共7页
Information analysis of high dimensional data was carried out through similarity measure application. High dimensional data were considered as the a typical structure. Additionally, overlapped and non-overlapped data ... Information analysis of high dimensional data was carried out through similarity measure application. High dimensional data were considered as the a typical structure. Additionally, overlapped and non-overlapped data were introduced, and similarity measure analysis was also illustrated and compared with conventional similarity measure. As a result, overlapped data comparison was possible to present similarity with conventional similarity measure. Non-overlapped data similarity analysis provided the clue to solve the similarity of high dimensional data. Considering high dimensional data analysis was designed with consideration of neighborhoods information. Conservative and strict solutions were proposed. Proposed similarity measure was applied to express financial fraud among multi dimensional datasets. In illustrative example, financial fraud similarity with respect to age, gender, qualification and job was presented. And with the proposed similarity measure, high dimensional personal data were calculated to evaluate how similar to the financial fraud. Calculation results show that the actual fraud has rather high similarity measure compared to the average, from minimal 0.0609 to maximal 0.1667. 展开更多
关键词 high dimensional data similarity measure DIFFERENCE neighborhood information financial fraud
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