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From computing with numbers to computing with words. Frommanipulation of measurements to manipulation of perceptions

机译:从数字运算到文字运算。从测量的操作到感知的操作

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Discusses a methodology for reasoning and computing with perceptions rather than measurements. An outline of such a methodology-referred to as a computational theory of perceptions is presented in this paper. The computational theory of perceptions, or CTP for short, is based on the methodology of CW. In CTP, words play the role of labels of perceptions and, more generally, perceptions are expressed as propositions in a natural language. CW-based techniques are employed to translate propositions expressed in a natural language into what is called the Generalized Constraint Language (GCL). In this language, the meaning of a proposition is expressed as a generalized constraint, N is R, where N is the constrained variable, R is the constraining relation and isr is a variable copula in which r is a variable whose value defines the way in which R constrains S. Among the basic types of constraints are: possibilistic, veristic, probabilistic, random set, Pawlak set, fuzzy graph and usuality. The wide variety of constraints in GCL makes GCL a much more expressive language than the language of predicate logic. In CW, the initial and terminal data sets, IDS and TDS, are assumed to consist of propositions expressed in a natural language. These propositions are translated, respectively, into antecedent and consequent constraints. Consequent constraints are derived from antecedent constraints through the use of rules of constraint propagation. The principal constraint propagation rule is the generalized extension principle. The derived constraints are retranslated into a natural language, yielding the terminal data set (TDS). The rules of constraint propagation in CW coincide with the rules of inference in fuzzy logic. A basic problem in CW is that of explicitation of N, R, and r in a generalized constraint, X is R, which represents the meaning of a proposition, p, in a natural language
机译:讨论基于感知而非度量的推理和计算方法。本文介绍了这种方法的概述,称为感知的计算理论。感知的计算理论(简称CTP)基于CW的方法论。在CTP中,单词扮演感知的标签角色,更广泛地说,感知以自然语言中的命题表达。基于CW的技术被用来将以自然语言表达的命题翻译成所谓的广义约束语言(GCL)。用这种语言,命题的含义表示为广义约束,N为R,其中N为受约束变量,R为约束关系,isr为变量copula,其中r为变量,其值定义了其中R约束S。约束的基本类型包括:可能的,真实的,概率的,随机集,Pawlak集,模糊图和常性。 GCL中的各种约束使GCL成为比谓词逻辑语言更具表现力的语言。在CW中,假定初始和最终数据集IDS和TDS由以自然语言表达的命题组成。这些命题分别被翻译成先前的和随之而来的约束。通过使用约束传播规则,可以从先前的约束中得出相应的约束。主要约束传播规则是广义扩展原理。派生的约束将重新转换为自然语言,从而产生终端数据集(TDS)。 CW中的约束传播规则与模糊逻辑中的推理规则一致。 CW中的一个基本问题是在广义约束中对N,R和r的显式化,X为R,这表示自然语言中命题p的含义

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