格值模糊图灵机及其计算能力

Yongming Li
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引用次数: 1

摘要

本文研究了分布格中具有隶属度的模糊图灵机,称为格值模糊图灵机。首先给出了格值模糊图灵机的几种表述,特别是确定格值模糊图灵机和非确定格值模糊图灵机(l- dtmc和l- ntm)。结果表明,l- dtmc和l- ntm作为模糊语言的受体是不等价的。这与经典的图灵机形成了鲜明的对比。其次,证明格值模糊图灵机可以识别n-r - e。在Bedregal和Figueira意义上的集合中,模糊图灵机的超计算能力在格集上得到了建立。第三,证明了格值模糊图灵机存在的充要条件是格值是有限的。对于具有紧度量的无限分配格,在近似意义上证明了通用模糊图灵机的存在。这意味着,对于任何给定的精度,存在一个通用机,它可以在给定的精度上模拟任何格值模糊图灵机。
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Lattice-valued fuzzy turing machines and their computing power
In this paper, fuzzy Turing machines with membership degrees in distributive lattices, which are called lattice-valued fuzzy Turing machines, are studied. First several formulations of lattice-valued fuzzy Turing machines, including in particular deterministic and nondeterministic lattice-valued fuzzy Turing machines (l-DTMcs and l-NTMs), are given. It is shown that l-DTMcs and l-NTMs are not equivalent as the acceptors of fuzzy languages. This contrasts sharply with classical Turing machines. Second, it is shown that lattice-valued fuzzy Turing machines can recognize n-r.e. sets in the sense of Bedregal and Figueira, the super-computing power of fuzzy Turing machines is established in the lattice-setting. Third, it is demonstrated that the truth-valued lattice being finite is a necessary and sufficient condition for the existence of a universal lattice-valued fuzzy Turing machine. For an infinite distributive lattice with a compact metric, it is declared that a universal fuzzy Turing machine exists in an approximate sense. This means, for any prescribed accuracy, there is a universal machine that can simulate any lattice-valued fuzzy Turing machine on it with the given accuracy.
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