Sciweavers

PR
2010

Semi-supervised clustering with metric learning: An adaptive kernel method

13 years 9 months ago
Semi-supervised clustering with metric learning: An adaptive kernel method
Most existing representative works in semi-supervised clustering do not sufficiently solve the violation problem of pairwise constraints. On the other hand, traditional kernel methods for semi-supervised clustering not only face the problem of manually tuning the kernel parameters due to the fact that no sufficient supervision is provided, but also lack a measure that achieves better effectiveness of clustering. In this paper, we propose an adaptive Semi-supervised Clustering Kernel Method based on Metric learning (SCKMM) to mitigate the above problems. Specifically, we first construct an objective function from pairwise constraints to automatically estimate the parameter of the Gaussian kernel. Then, we use pairwise constraint-based K-means approach to solve the violation issue of constraints and to cluster the data. Furthermore, we introduce metric learning into nonlinear semi-supervised clustering to improve separability of the data for clustering. Finally, we perform clustering an...
Xuesong Yin, Songcan Chen, Enliang Hu, Daoqiang Zh
Added 29 Jan 2011
Updated 29 Jan 2011
Type Journal
Year 2010
Where PR
Authors Xuesong Yin, Songcan Chen, Enliang Hu, Daoqiang Zhang
Comments (0)