selfAffinity

所属分类:人工智能/神经网络/深度学习
开发工具:PDF
文件大小:367KB
下载次数:52
上传日期:2009-04-02 18:19:14
上 传 者zmgo
说明:  AP是在数据点的相似度矩阵的基础上进行聚类.对于规模很大的数据集,AP算法是一种快速、有效的聚类方法,这是其他传统的聚类算法所不能及的,
(A semi-supervised clustering method based on affinity propagation (AP) algorithm is proposed in this paper. AP takes as input measures of similarity between pairs of data points. AP is an efficient and fast clustering algorithm for large dataset compared with the existing clustering algorithms, such as K-center clustering. But for the datasets with complex cluster structures, it cannot produce good clustering results. It can improve the clustering performance of AP by using the priori known labeled data or pairwise constraints to adjust the similarity matrix. Experimental results show that such method indeed reaches its goal for complex datasets, and this method outperforms the comparative methods when there are a large number of pairwise constraints.)

文件列表:
基于近邻传播算法的半监督聚类.pdf (598490, 2009-02-17)

近期下载者

相关文件


收藏者