Conference Proceedings
Scalable Bottom-up Subspace Clustering using FP-Trees for High Dimensional Data
MT Doan, J Qi, S Rajasegarar, C Leckie
IEEE | Published : 2019
Abstract
© 2018 IEEE. Subspace clustering aims to find groups of similar objects (clusters) that exist in lower dimensional subspaces from a high dimensional dataset. It has a wide range of applications, such as analysing high dimensional sensor data or DNA sequences. However, existing algorithms have limitations in finding clusters in non-disjoint subspaces and scaling to large data, which impinge their applicability in areas such as bioinformatics and the Internet of Things. We aim to address such limitations by proposing a subspace clustering algorithm using a bottom-up strategy. Our algorithm first searches for base clusters in low dimensional subspaces. It then forms clusters in higher-dimension..
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Awarded by Google
Funding Acknowledgements
The authors would like to acknowledge the support of CSIRO DATA61, and Google PhD Travel Scholarship. This work is partially supported by Australian Research Council (ARC) Discovery Project DP180103332.