State of the Art in Fuzzy Database Modeling

State of the Art in Fuzzy Database Modeling

Jose Galindo, Angelica Urrutia, Mario Piattini
Copyright: © 2006 |Pages: 15
ISBN13: 9781591403241|ISBN10: 1591403243|ISBN13 Softcover: 9781591403258|EISBN13: 9781591403265
DOI: 10.4018/978-1-59140-324-1.ch003
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MLA

José Galindo, et al. "State of the Art in Fuzzy Database Modeling." Fuzzy Databases: Modeling, Design and Implementation, IGI Global, 2006, pp.60-74. https://doi.org/10.4018/978-1-59140-324-1.ch003

APA

J. Galindo, A. Urrutia , & M. Piattini (2006). State of the Art in Fuzzy Database Modeling. IGI Global. https://doi.org/10.4018/978-1-59140-324-1.ch003

Chicago

José Galindo, Angelica Urrutia , and Mario Piattini. "State of the Art in Fuzzy Database Modeling." In Fuzzy Databases: Modeling, Design and Implementation. Hershey, PA: IGI Global, 2006. https://doi.org/10.4018/978-1-59140-324-1.ch003

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Abstract

On occasion, the term imprecision embraces several meanings that we should differentiate. For example, as you saw in Chapter II, the information you have may be incomplete or fuzzy (diffuse or vague), you may not know whether it is certain (uncertainty), perhaps you are totally ignorant of the information (unknown), you may know that the information cannot be applied to a specific entity (undefined), or you may not even know whether the data can be applied to the entity in question (total ignorance or a value of null) (Umano & Fukami, 1994). Each of these terms depends on the context in which it is applied. The management of uncertainty in database systems is a very important problem (Motro, 1995), as the information is often vague. Motro states that fuzzy information is content-dependent, and he classifies it as follows: • Uncertainty: It is impossible to determine whether the information is true or false. For example, “John may be 38 years old.” • Imprecision: The information available is not specific enough. For example, “John may be between 37 and 43 years old,” “John is 34 or 43 years old” (disjunction), “John is not 37 years old” (negative), or even a simple unknown. • Vagueness: The model includes elements (predicates or quantifiers) that are inherently vague, for example, “John is in his early years” or “John is at the end of his youth.” However, after these concepts have been defined, this case would match the previous one (imprecision). • Inconsistency: It contains two or more pieces of information that cannot be true at the same time. For example, “John is 37 and 43 years old, or he is 35 years old”; this is a special case of disjunction. • Ambiguity: Some elements of the model lack complete semantics (or a complete meaning). For example, “It is unclear whether the salaries are annual or monthly.”

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