Title :
Scalable model-based clustering for large databases based on data summarization
Author :
Jin, Huidong ; Wong, Man-Leung ; Leung, K.S.
Author_Institution :
Div. of Math. & Inf. Sci., Commonwealth Sci. & Ind. Res. Organ., Canberra, ACT, Australia
Abstract :
The scalability problem in data mining involves the development of methods for handling large databases with limited computational resources such as memory and computation time. In this paper, two scalable clustering algorithms, bEMADS and gEMADS, are presented based on the Gaussian mixture model. Both summarize data into subclusters and then generate Gaussian mixtures from their data summaries. Their core algorithm, EMADS, is defined on data summaries and approximates the aggregate behavior of each subcluster of data under the Gaussian mixture model. EMADS is provably convergent. Experimental results substantiate that both algorithms can run several orders of magnitude faster than expectation-maximization with little loss of accuracy.
Keywords :
Gaussian processes; data mining; maximum likelihood estimation; pattern clustering; very large databases; Gaussian mixture model; data mining; data summarization; expectation-maximization; large databases; scalable model-based clustering; Aggregates; Bridges; Clustering algorithms; Covariance matrix; Data mining; Databases; Gaussian distribution; Parameter estimation; Scalability; Solids; Gaussian mixture model; Index Terms- Scalable clustering; data summary; expectation-maximization; maximum penalized likelihood estimate.; Algorithms; Artificial Intelligence; Cluster Analysis; Computer Simulation; Data Interpretation, Statistical; Databases, Factual; Information Storage and Retrieval; Models, Statistical; Pattern Recognition, Automated;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2005.226