双权学习向量量化

Chuanfeng Lv, Xing An, Zhiwen Liu, Qiangfu Zhao
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引用次数: 3

摘要

提出了一种新的学习向量量化(LVQ)方法,即双权学习向量量化(DWLVQ)。其基本思想是为参考向量的每个特征引入一个额外的权重(即重要性向量),以表示该特征在分类过程中的重要性。在训练迭代中,根据各自参考向量的适应度来调整重要向量。随着训练过程的进行,可以同时调整双权值(参考向量和重要向量),最终提高识别率。选择UCI的机器学习数据库来验证所提出的新方法的性能。实验结果表明,与LVQ、广义LVQ(GLVQ)、关联LVQ(RLVQ)和广义相关LVQ(GRLVQ)等现有方法相比,DWLVQ在识别率、计算复杂度和稳定性方面都有较好的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dual Weight Learning Vector Quantization
A new learning vector quantization (LVQ) approach, so-called dual weight learning vector quantization (DWLVQ), is presented in this paper. The basic idea is to introduce an additional weight (namely the importance vector) for each feature of reference vectors to indicate the importance of this feature during the classification. The importance vectors are adapted regarding the fitness of the respective reference vector over the training iteration. Along with the progress of the training procedure, the dual weights (reference vector and importance vector) can be adjusted simultaneously and mutually to improve the recognition rate eventually. Machine learning databases from UCI are selected to verify the performance of the proposed new approach. The experimental results show that DWLVQ can yield superior performance in terms of recognition rate, computational complexity and stability, compared with the other existing methods which including LVQ, generalized LVQ(GLVQ), relevance LVQ(RLVQ) and generalized relevance LVQ (GRLVQ).
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