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meimei
- matlab聚类分析方法,利用c均值方法对IRIS数据进行聚类分析-matlab cluster analysis methods using c mean clustering analysis of IRIS data
Cmeansclusteringmethods
- 本算法在vc++6.0中进行实验。分别就分解聚类和C-均值聚类两种方法在IRIS数据集上进行操作。分类前先将数据集中的样本顺序打乱形成混合数据。分解聚类中,采用前100个样本用对分法编制程序将数据分为两类。C-均值聚类采用全部的150个样本,将类别参数K设为3,将数据分为三类。-The algorithm in vc++6.0 in the experiment. Separate cluster and decomposition of two C-means clustering metho
iris
- 用自组织特征映射神经网络对Iris数据集进行分类,我用神经网络工具箱编写了个简单的程序,实现iris的分类。-Using self-organizing feature map neural network examples of clustering Iris data set classification, I use neural network toolbox to write a simple program, realize the classification of Iris.
Parallel-axis
- 平行坐标轴是可视化的一种传统方法,用于模式识别聚类等,数据是‘鸢尾花数据集’,有较好的分类效果。-Parallel to the axis is a traditional way to visualize, used for clustering and pattern recognition, data is the iris data set, have better classification effect.
improved-fuzzy-c-means-clustering
- 该算法引入遗传算法对模糊c均值算法进行改进,并在iris数据集中进行实验验证,得到很高的正确率。-The algorithm genetic algorithm fuzzy c-means algorithm is improved, and focus on experiments in the iris data to obtain a high accuracy.
BBPSO
- BBPSO clustering for data bases like iris, vowel, cancer, etc.