High-dimensional clustering via Random Projections

09/24/2019
by   Laura Anderlucci, et al.
0

In this work, we address the unsupervised classification issue by exploiting the general idea of RP ensemble. Specifically, we propose to generate a set of low dimensional independent random projections and to perform model-based clustering on each of them. The top B^* projections, i.e. the projections which show the best grouping structure are then retained. The final partition is obtained by aggregating the clusters found in the projections via consensus. The performances of the method are assessed on both real and simulated datasets. The obtained results suggest that the proposal represents a promising tool for high-dimensional clustering.

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