Multi-Objective Maximization of Monotone Submodular Functions with Cardinality Constraint
Rajan Udwani

TL;DR
This paper develops fast, practical algorithms with approximation guarantees for multi-objective submodular maximization under cardinality constraints, especially when the number of objectives is super constant, and demonstrates their effectiveness through experiments.
Contribution
It introduces a modified algorithm achieving near-optimal approximation for super constant objectives and a faster MWU-based method with strong guarantees.
Findings
Modified algorithm achieves $(1-1/e)$ approximation for $m=o(k/ ext{log}^3 k)$
MWU-based method attains $ ilde{O}(n/ ext{delta}^3)$ runtime with $(1-1/e)^2- ext{delta}$ approximation
Heuristic outperforms existing methods in synthetic experiments
Abstract
We consider the problem of multi-objective maximization of monotone submodular functions subject to cardinality constraint, often formulated as . While it is widely known that greedy methods work well for a single objective, the problem becomes much harder with multiple objectives. In fact, Krause et al.\ (2008) showed that when the number of objectives grows as the cardinality i.e., , the problem is inapproximable (unless ). On the other hand, when is constant Chekuri et al.\ (2010) showed a randomized approximation with runtime (number of queries to function oracle) . %In fact, the result of Chekuri et al.\ (2010) is for the far more general case of matroid constant. We focus on finding a fast and practical algorithm that has (asymptotic) approximation guarantees even when…
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