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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University of Melbourne Researchers