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Fuzzy feature weighting techniques for vector quantisation

机译:矢量量化的模糊特征加权技术

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Vector quantization (VQ) is a simple but effective modelling technique in pattern recognition. VQ employs a clustering technique to convert a feature vector set in to a cluster center set to model the feature vector set. Some clustering techniques have been applied to improve VQ. However VQ is not always effective because data features are treated equally although their importance may not be the same. Some automated feature weighting techniques have been proposed to overcome this drawback. This paper reviews those weighting techniques and proposes a general scheme for selecting any pair of clustering and feature weighting techniques to form a fuzzy feature weighting-based VQ modelling technique. Besides the current techniques, a number of new feature weighting-based VQ techniques is proposed and their evaluations are also presented.
机译:矢量量化(VQ)是模式识别中一种简单但有效的建模技术。 VQ采用聚类技术将特征向量集转换为聚类中心集,以对特征向量集进行建模。一些聚类技术已被应用于改善VQ。但是,VQ并不总是有效的,因为尽管数据功能的重要性可能不尽相同,但它们却受到同等对待。已经提出了一些自动特征加权技术来克服该缺点。本文回顾了这些加权技术,并提出了一种选择任意一对聚类和特征加权技术以形成基于模糊特征加权的VQ建模技术的通用方案。除当前技术外,还提出了许多基于新特征权重的VQ技术,并对它们进行了评估。

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