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Parallel Quasi-concave set optimization: A new frontier that scales without needing submodularity

19 August 2021
Praneeth Vepakomma
Yulia Kempner
Ramesh Raskar
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Abstract

Classes of set functions along with a choice of ground set are a bedrock to determine and develop corresponding variants of greedy algorithms to obtain efficient solutions for combinatorial optimization problems. The class of approximate constrained submodular optimization has seen huge advances at the intersection of good computational efficiency, versatility and approximation guarantees while exact solutions for unconstrained submodular optimization are NP-hard. What is an alternative to situations when submodularity does not hold? Can efficient and globally exact solutions be obtained? We introduce one such new frontier: The class of quasi-concave set functions induced as a dual class to monotone linkage functions. We provide a parallel algorithm with a time complexity over nnn processors of O(n2g)+O(log⁡log⁡n)\mathcal{O}(n^2g) +\mathcal{O}(\log{\log{n}})O(n2g)+O(loglogn) where nnn is the cardinality of the ground set and ggg is the complexity to compute the monotone linkage function that induces a corresponding quasi-concave set function via a duality. The complexity reduces to O(gnlog⁡(n))\mathcal{O}(gn\log(n))O(gnlog(n)) on n2n^2n2 processors and to O(gn)\mathcal{O}(gn)O(gn) on n3n^3n3 processors. Our algorithm provides a globally optimal solution to a maxi-min problem as opposed to submodular optimization which is approximate. We show a potential for widespread applications via an example of diverse feature subset selection with exact global maxi-min guarantees upon showing that a statistical dependency measure called distance correlation can be used to induce a quasi-concave set function.

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