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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >On the use of fuzzy logic and learning automata optimization to resolve the Liar and related paradoxes
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On the use of fuzzy logic and learning automata optimization to resolve the Liar and related paradoxes

机译:关于使用模糊逻辑和学习自动机优化来解决骗子和相关悖论

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We show that logical paradoxes based on self-reference (of which the Liar is the best known example) are equivalent to the non-existence of solutions to a numerical system of equations, the so-called truth-value equations. Furthermore, we show that in many cases a self-referential system which does not posses a crisp (Boolean) solution can be solved by expanding the solution set to include fuzzy solutions. Then we formulate the computation of these fuzzy solutions as an optimization problem and, by numerical experiments, we demonstrate that teams of Learning Automata (of a type intermediate between finite action and continuous action automata) can be succesfully used to solve the optimization problem. In this manner, the combination of fuzzy logic and learning automata resolves a wide class of paradoxes.
机译:我们证明了基于自引用的逻辑悖论(其中骗子是最著名的例子)等同于不存在方程式数值系统(所谓的真值方程)的解决方案。此外,我们表明,在许多情况下,可以通过将解集扩展为包括模糊解来解决不具有清晰(布尔)解的自引用系统。然后,我们将这些模糊解的计算公式化为一个优化问题,并且通过数值实验,我们证明了学习自动机团队(介于有限作用和连续作用自动机之间的一种类型)可以成功地用于解决该优化问题。通过这种方式,模糊逻辑和学习自动机的结合解决了一大类悖论。

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