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Imprecise Rules for Data Privacy

机译:数据隐私的不精确规则

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When rules are induced, some rules can be supported only by a very small number of objects. Such rules often correspond to special cases so that supporting objects may be easily estimated. If the rules with small support include some sensitive data, this estimation of objects is not very good in the sense of data privacy. Considering this fact, we investigate utilization of imprecise rules for privacy protection in rule induction. Imprecise rules are rules classifying objects only into a set of possible classes. Utilizing imprecise rules, we propose an algorithm to induce k-anonymous rules, rules with k or more supporting objects. We demonstrate that the accuracy of the classifier with rules induced by the proposed algorithm is not worse than that of the classifier with rules induced by the conventional method. Moreover, the advantage of the proposed method with imprecise rules is examined by comparing other conceivable method with precise rules.
机译:当引入规则时,某些规则只能由极少数的对象来支持。这样的规则通常对应于特殊情况,因此可以轻松估算支撑对象。如果支持较少的规则包含一些敏感数据,那么从数据隐私的角度来看,对对象的这种估计不是很好。考虑到这一事实,我们研究了不精确规则在规则归纳中对隐私保护的利用。不精确的规则是仅将对象分类为一组可能的类的规则。利用不精确的规则,我们提出了一种算法来诱导k个匿名规则,即具有k个或更多支持对象的规则。我们证明了该算法所引入规则的分类器的准确性并不比传统方法所诱导规则的分类器的准确性差。此外,通过将其他可能的方法与精确规则进行比较,检验了所提出方法具有不精确规则的优点。

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