基于权重模糊逻辑的敏感性关联规则挖掘

M. Bansal, Dinesh Grover, D. Sharma
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引用次数: 7

摘要

敏感规则的挖掘是数据挖掘中最重要的任务。现有的技术大多是基于支持度和置信度的清晰阈值来寻找敏感规则,这对原始数据库造成了严重的副作用。为了避免这些清晰的边界,本文旨在使用加权模糊隐私保护挖掘(WFPPM)来提取敏感的关联规则。WFPPM通过计算规则的权重完全找到敏感规则。首先,我们使用FP-Growth从数据库中挖掘关联规则。接下来,我们利用模糊算法在提取的规则中找到敏感规则。实验结果表明,与以往的方法相比,该方法在不做任何修改的情况下找到了实际的敏感规则,并保持了发布数据的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensitivity Association Rule Mining using Weight based Fuzzy Logic
Mining of sensitive rules is the most important task in data mining. Most of the existing techniques worked on finding sensitive rules based upon the crisp thresh hold value of support and confidence which cause serious side effects to the original database. To avoid these crisp boundaries this paper aims to use WFPPM (Weighted Fuzzy Privacy Preserving Mining) to extract sensitive association rules. WFPPM completely find the sensitive rules by calculating the weights of the rules. At first, we apply FP-Growth to mine association rules from the database. Next, we implement fuzzy to find the sensitive rules among the extracted rules. Experimental results show that the proposed scheme find actual sensitive rules without any modification along with maintaining the quality of the released data as compared to the previous techniques.
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