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Construction of a Learning Automaton for Cycle Detection in Noisy Data Sequences

机译:噪声数据序列中周期检测的学习自动机的构建

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This paper investigates the problem of cycle detection in periodic noisy data sequences. Our approach is based on reinforcement learning principles. A constructive approach is used to devise a variable structure learning automaton (VSLA) that becomes capable of recognizing the potential cycles of the noisy input sequence. The constructive approach allows for VSLAs to analyze sequences not requiring a priori information about their cycle and noise. Consecutive tokens of the input sequence are presented to VSLA, one at a time, where VSLA uses data's syntactic property to construct itself from a single state at the beginning to a topology that is able to recognize an unknown cycle of the given data. The main strength of this approach is applicability in many fields and high recognition rates.
机译:本文研究周期噪声数据序列中的循环检测问题。我们的方法基于强化学习原则。使用一种建设性的方法来设计可变结构学习自动机(VSLA),该自动机变得能够识别嘈杂的输入序列的潜在周期。构造性方法允许VSLA分析不需要有关其周期和噪声的先验信息的序列。输入序列的连续令牌一次提供给VSLA,其中VSLA使用数据的句法属性从一开始的单个状态到能够识别给定数据未知周期的拓扑构造自身。这种方法的主要优势是在许多领域中的适用性和较高的识别率。

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