学习参数对贝叶斯自组织映射影响的实证研究

Xiaolian Guo, Haiying Wang, D. H. Glass
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引用次数: 2

摘要

贝叶斯自组织映射(BSOM)算法是一种扩展的自组织学习过程,它使用神经元估计的后验概率来代替距离度量和邻域函数。它被用于数据聚类和密度估计等领域。然而,学习参数的影响还没有得到严格的研究。在分析两个合成数据集的基础上,研究了学习率、初始均值、初始协方差矩阵、输入顺序和迭代次数等学习参数的选择对学习算法的影响。实验结果表明,BSOM算法对初始均值和迭代次数不敏感,但对学习率、初始协方差矩阵和输入顺序比较敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of learning parameters on Bayesian self-organizing maps: An empirical study
The Bayesian self-organizing map (BSOM) algorithm is an extended self-organizing learning process, which uses the neurons' estimated posterior probabilities to replace the distance measure and neighborhood function. It is used in such areas as data clustering and density estimation. However, the impact of learning parameters has not been rigorously studied. Based on the analysis of two synthetic datasets, this paper investigates the impact of the selection of learning parameters such as the learning rates, the initial mean values, the initial covariance matrices, the input order and the number of iterations. The experimental results indicate that the BSOM algorithm is not sensitive to the initial mean values and the number of iterations, however, it is rather sensitive to the learning rates, the initial covariance matrices and the input order.
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