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A SINGLE NEAREST NEIGHBOR FUZZY APPROACH FOR PATTERN RECOGNITION

机译:模式识别的单一最近邻模糊方法

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The main aim of this paper is to introduce the single nearest neighbor approach for pattern recognition and the concept of incremental learning of a fuzzy classifier where decision making is based on data available up to time t rather than what may be available at the start of the trial, i.e. at t=0. The single nearest neighbor method is explained in the context of solving the classic two-spiral benchmark. The proposed approach is further tested on the electronic nose coffee data to judge its performance on a real problem. This paper illustrates: (1) a novel fuzzy classifier system based on the single nearest neighbor method, (2) its application to the spiral benchmark taking the incremental pattern recognition approach, and (3) results obtained when solving the two-spiral problem with both nonincremental and incremental methods and coffee classification with the nonincremental method. The results show that incremental learning leads to improved recognition performance for spiral data and it is possible to study the behavioral characteristics of the classifier possibility related parameters.
机译:本文的主要目的是介绍用于模式识别的单一最近邻方法和模糊分类器增量学习的概念,其中决策是基于时间t之前可用的数据,而不是基于开始时可用的数据。试用,即在t = 0时。在解决经典的双螺旋基准的背景下说明了单个最近邻方法。在电子鼻咖啡数据上对提出的方法进行了进一步测试,以判断其在实际问题上的性能。本文说明:(1)一种基于单最近邻法的新型模糊分类器系统;(2)采用增量模式识别方法将其应用于螺旋基准测试;(3)求解具有双螺旋问题的结果。非增量和增量方法,以及非增量方法对咖啡的分类。结果表明,增量学习可提高螺旋数据的识别性能,并且有可能研究分类器可能性相关参数的行为特征。

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