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A computational model for knowledge extraction in uncertain textual data using karnaugh map technique

机译:使用卡诺图技术的不确定文本数据中知识提取的计算模型

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摘要

The present technology such as privacy-preserving data mining generates data, which is inherently uncertain in nature. There are other existing tools, which are also collecting data in an imprecise way. Further mining frequent patterns from uncertain textual data is not as simple as in precise data, and normal approaches that work for precise data are not applicable for uncertain data. This paper describes the motivation behind proposed method based on review of existing frequent termset mining techniques in document data. Further, a new mining method using karnaugh map is proposed for finding frequent termset from uncertain textual data, and experiment carried out requires only a single database scan for mining frequent patterns, which reduces to low processing time.
机译:诸如保护隐私的数据挖掘之类的本技术生成本质上固有地不确定的数据。还有其他现有工具,它们也以不精确的方式收集数据。从不确定的文本数据中进一步挖掘频繁模式并不像在精确数据中那样简单,并且适用于精确数据的常规方法不适用于不确定数据。本文介绍了基于对文档数据中现有的频繁术语集挖掘技术的回顾而提出的方法背后的动机。此外,提出了一种使用卡诺图的新挖掘方法,用于从不确定的文本数据中查找频繁项集,并且进行的实验仅需要一次数据库扫描即可挖掘频繁模式,从而减少了处理时间。

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