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Catalytic inference analysis: detecting inference threats due to knowledge discovery

机译:催化推理分析:检测由于知识发现引起的推理威胁

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Knowledge discovery in databases can be enhanced by introducing "catalytic relations" conveying external knowledge. The new information catalyzes database inference, manifesting latent channels. Catalytic inference is imprecise in nature, but the granularity of inference may be fine enough to create security compromises. Catalytic inference is computationally intensive. However, it can be automated by advanced search engines that gather and assemble knowledge from information repositories. The relentless information gathering potential of such search engines makes them formidable security threats. This paper presents a formalism for modeling and analyzing catalytic inference in "mixed" databases containing various precise, imprecise and fuzzy relations. The inference formalism is flexible and robust, and well-suited to implementation.
机译:通过引入传达外部知识的“催化关系”,可以增强数据库中的知识发现。新信息促进了数据库推论,显示了潜在的渠道。催化推理本质上是不精确的,但是推理的粒度可能足够精细,足以造成安全性的损害。催化推断是计算密集型的。但是,它可以由高级搜索引擎自动执行,这些引擎从信息存储库中收集和收集知识。这种搜索引擎无穷无尽的信息收集潜力使它们成为强大的安全威胁。本文提出了一种形式化的模型,用于在包含各种精确,不精确和模糊关系的“混合”数据库中建模和分析催化推理。推理形式主义具有灵活性和鲁棒性,非常适合于实现。

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