Service analytics framework for web-delivered services
Chunhua Tian, Rongzeng Cao, et al.
SOLI 2008
Despite the existence of a large number of clustering algorithms, clustering remains a challenging problem. As large datasets become increasingly common in a number of different domains, it is often the case that clustering algorithms must be applied to heterogeneous sets of variables, creating an acute need for robust and scalable clustering methods for mixed continuous and categorical scale data. We show that current clustering methods for mixed-type data are generally unable to equitably balance the contribution of continuous and categorical variables without strong parametric assumptions. We develop KAMILA (KAy-means for MIxed LArge data), a clustering method that addresses this fundamental problem directly. We study theoretical aspects of our method and demonstrate its effectiveness in a series of Monte Carlo simulation studies and a set of real-world applications.
Chunhua Tian, Rongzeng Cao, et al.
SOLI 2008
Paul Luo Li, Mary Shaw, et al.
SIGSOFT/FSE 2004
Eric W. Cope, Jochen Malte Küster, et al.
IBM J. Res. Dev
Ram Chillarege, Bonnie Ray, et al.
ISSRE 1993