Cultural advice

The Australian National University acknowledges, celebrates and pays our respects to the Ngunnawal and Ngambri people of the Canberra region and to all First Nations Australians on whose traditional lands we meet and work, and whose cultures are among the oldest continuing cultures in human history.

Aboriginal and Torres Strait Islander peoples are advised that ANU Library collections may include images, names, voices, and other representations of deceased persons.

Material in the collection may contain terms, language or views that reflect the period in which the item was created and may be considered inappropriate today.

k -variates++: More pluses in the k -means++

Loading...
Thumbnail Image

Date

Authors

Nock, Richard
Canyasse, Raphael
Boreli, Roksana
Nielsen, Frank

Journal Title

Journal ISSN

Volume Title

Publisher

International Machine Learning Society

Abstract

K-means++ seeding has become a de facto standard for hard clustering algorithms. In this paper, our first contribution is a two-way generalisation of this seeding, k-variates++, that includes the sampling of general densities rather than just a discrete set of Dirac densities anchored at the point locations, and a generalisation of the well known Arthur-Vassilvitskii (AV) approximation guarantee, in the form of a bias+variance approximation bound of the global optimum. This approximation exhibits a reduced dependency on the "noise" component with respect to the optimal potential - actually approaching the statistical lower bound. We show that kvariates++ reduces to efficient (biased seeding) clustering algorithms tailored to specific frameworks; these include distributed, streaming and on-line clustering, with direct approximation results for these algorithms. Finally, we present a novel application of fc-variates++ to differential privacy. For either the specific frameworks considered here, or for the differential privacy setting, there is little to no prior results on the direct application of fc-means++ and its approximation bounds - state of the art contenders appear to be significantly more complex and/ or display less favorable (approximation) properties. We stress that our algorithms can still be run in cases where there is no closed form solution for the population minimizer. We demonstrate the applicability of our analysis via experimental evaluation on several domains and settings, displaying competitive performances vs state of the art.

Description

Keywords

Citation

Source

33rd International Conference on Machine Learning, ICML 2016

Book Title

Entity type

Access Statement

License Rights

DOI

Restricted until

2099-12-31

Downloads

abcd