Israel Cidon, Leonidas Georgiadis, et al.
IEEE/ACM Transactions on Networking
Most structured data in real-life applications are stored in relational databases containing multiple semantically linked relations. Unlike clustering in a single table, when clustering objects in relational databases there are usually a large number of features conveying very different semantic information, and using all features indiscriminately is unlikely to generate meaningful results. Because the user knows her goal of clustering, we propose a new approach called CrossClus, which performs multi-relational clustering under user's guidance. Unlike semi-supervised clustering which requires the user to provide a training set, we minimize the user's effort by using a very simple form of user guidance. The user is only required to select one or a small set of features that are pertinent to the clustering goal, and CrossClus searches for other pertinent features in multiple relations. Each feature is evaluated by whether it clusters objects in a similar way with the user specified features. We design efficient and accurate approaches for both feature selection and object clustering. Our comprehensive experiments demonstrate the effectiveness and scalability of CrossClus. © 2007 Springer Science+Business Media, LLC.
Israel Cidon, Leonidas Georgiadis, et al.
IEEE/ACM Transactions on Networking
B.K. Boguraev, Mary S. Neff
HICSS 2000
John M. Boyer, Charles F. Wiecha
DocEng 2009
G. Ramalingam
Theoretical Computer Science