Why Product "And"-Operation Is Often Efficient: One More Argument

Pub Date : 2017-01-01 DOI:10.12988/JITE.2017.61249
O. Kosheleva, V. Kreinovich
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引用次数: 2

Abstract

It is an empirical fact that the algebraic product is one the most efficient “and”-operations in fuzzy logic. In this paper, we provide one of the possible explanations of this empirical phenomenon. 1 Formulation of the Problem Fuzzy logic and “and”-operations (t-norms): a brief reminder. To describe the experts’ uncertainty in their statements, Lotfi Zadeh proposed a special formalism of fuzzy logic, in which for each statement, the expert’s degree of certainty in this statement is described by a number from the interval [0, 1]. In this description, 1 means that the expert is absolutely sure that the corresponding statement is true, 0 means that the expert is absolutely sure that the statement is false, and values between 0 and 1 correspond to intermediate degree of confidence; see, e.g., [1, 2, 3]. To make a decision, an expert often uses several statements. For example, he or she may use a rule according to which a certain action need to be taken if two conditions are satisfied, i.e., if the first condition A is satisfied and the second condition B is satisfied. It is therefore desirable to find out how confident is the expert that the corresponding “and”-statement A&B holds, or, more generally, that the “and”-combination A1 & . . . &An holds. Ideally, we should extract these degrees from the experts. However, for n statements, we have 2 − 1 possible “and”-combinations. Already for n = 100, we thus get an astronomical number of combinations, there is no way to ask the expert about each of these combinations. In situations when we cannot explicitly ask an expert about his/her degree of certainty in an “and”-combination A&B, we need to estimate this degree based on the known degrees of certainty a and b in statements A and B. Let us denote this estimate by f&(a, b). This function is known as an “and”-operation, or, alternatively, a t-norm.
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为什么产品“和”操作通常是有效的:又一个论点
代数积是模糊逻辑中最有效的“与”运算之一,这是一个经验事实。在本文中,我们为这一经验现象提供了一种可能的解释。1问题的表述模糊逻辑和“与”运算(t-范数):一个简短的提醒。为了描述专家在其陈述中的不确定性,Lotfi Zadeh提出了一种特殊的模糊逻辑形式,其中对于每个陈述,专家在该陈述中的确定性程度用区间[0,1]中的一个数字来描述。在此描述中,1表示专家绝对肯定该陈述为真,0表示专家绝对肯定该陈述为假,0和1之间的值对应于中间置信度;请看,例如,[1,2,3]。为了做出决定,专家通常会使用几种陈述。例如,他或她可能会使用一个规则,根据该规则,如果满足两个条件,即,如果满足第一个条件a和第二个条件B,则需要采取某种行动。因此,我们希望找出专家对相应的“和”语句A&B有多自信,或者更一般地说,对“和”组合A1 &…一个成立。理想情况下,我们应该从专家那里获得这些学位。然而,对于n个语句,我们有2−1种可能的“和”组合。对于n = 100,我们已经得到了天文数字的组合,没有办法向专家询问每一个组合。当我们不能明确地询问专家他/她在“和”组合a和b中的确定性程度时,我们需要根据陈述a和b中已知的确定性程度a和b来估计这个程度。让我们用f&(a, b)表示这个估计。这个函数被称为“和”操作,或者,也可以称为t范数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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