Catalytic Inference Analysis Using Fuzzy Relations
نویسندگان
چکیده
This paper discusses the role of fuzzy databases in catalytic inference analysis. In knowledge discovery and inference control applications, it is important to represent common sense knowledge explicitly in the databases being analyzed. Such knowledge, typically expressed in fuzzy terms, can be introduced as catalytic relations. Analyzing the resulting augmented databases materializes new rules and latent compromising inference channels based on common knowledge and database data.
منابع مشابه
Catalyzing Database Inference with Fuzzy Relations
Inference analysis plays a major role in database security and knowledge discovery. Common sense knowledge, typically expressed in imprecise or fuzzy terms, can be introduced as catalytic relations to existing databases. Analyzing the augmented databases materializes new rules and latent compromising inference channels based on common knowledge and existing database data. This paper shows how f...
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