An incremental exact algorithm for the hyper-rectangular clustering problem with axisparallel clusters
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Show full item recordAuthor/s:
Delle Donne, Diego
Marenco, Javier
Moreno, Eduardo
Date:
2024-10-15Abstract
We address the problem of clustering a set of points in Rd with axis-parallel clusters.
Previous exact approaches to this problem are mostly based on integer programming
formulations and can only solve to optimality instances of small size. In this work
we propose an adaptive exact strategy which takes advantage of the capacity to solve
small instances to optimality of previous approaches. Our algorithm starts by solving
an instance with a small subset of points and iteratively adds more points if these are
not covered by the obtained solution. We prove that as soon as a solution covers the
whole set of point from the instance, then the solution is actually an optimal solution
for the original problem. We compare the efficiency of the new method against the
existing ones with an exhaustive computational experimentation in which we show
that the new approach is able to solve to optimality instances of higher orders of
magnitude.