基于最接近的特征中点的模式分类

Zonglin Zhou, C. Kwoh
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引用次数: 14

摘要

本文提出了一种新的模式分类方法——最近特征中点(NFM)。同一类的任意两个特征点由它们之间的特征中点(FM)进行概化。这样就扩大了现有原型的表示能力。分类基于查询特征点到每个FM的最近距离。本文从理论上证明了对于n维高斯分布,基于NFM距离度量的分类比基于特征线上任何其他点的分类误差概率最小。此外,理论研究表明,在某些假设下,当特征空间维数较高时,NFL近似等价于NFM。对模拟数据集的实证评价与所有理论研究一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The pattern classification based on the nearest feature midpoints
In this paper, we propose a novel method, called the nearest feature midpoint (NFM), for pattern classification. Any two feature points of the same class are generalized by the feature midpoint (FM) between them. The representational capacity of available prototypes is thus expanded. The classification is based on the nearest distance from the query feature point to each FM. A theoretical proof is provided in this paper to show that for the n-dimensional Gaussian distribution, the classification based on the NFM distance metric achieves the least error probability as compared to those based on any other points on the feature lines. Furthermore, a theoretical investigation indicates that under some assumption the NFL is approximately equivalent to the NFM when the dimension of the feature space is high. The empirical evaluation on a simulated data set concurs with all the theoretical investigations.
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