Abstract
Although most research in density-based clustering algorithms focused on finding distinct clusters, many real-world applications (such as gene functions in a gene regulatory network) have inherently overlapping clusters. Even with overlapping features, density-based clustering methods do not define a probabilistic model of data. Therefore, it is hard to determine how "good" clustering, predicting, and clustering new data into existing clusters are. Therefore, a probability model for overlap density-based clustering is a critical need for large data analysis. In this paper, a new Bayesian density-based method (Bayesian-OverDBC) for modeling the overlapping clusters is presented. Bayesian-OverDBC can predict the formation of a new cluster. It can also predict the overlapping of cluster with existing clusters. Bayesian-OverDBC has been compared with other algorithms (nonoverlapping and overlapping models). The results show that Bayesian-OverDBC can be significantly better than other methods in analyzing microarray data.
Cite
CITATION STYLE
Mirzaie, M., Barani, A., Nematbakkhsh, N., & Mohammad-Beigi, M. (2015). Bayesian-OverDBC: A Bayesian density-based approach for modeling overlapping clusters. Mathematical Problems in Engineering, 2015. https://doi.org/10.1155/2015/187053
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.