Treffer: Submodular maximization subject to a knapsack constraint: combinatorial algorithms with near-optimal adaptive complexity

Title:
Submodular maximization subject to a knapsack constraint: combinatorial algorithms with near-optimal adaptive complexity
Contributors:
Amanatidis, Georgio, Fusco, Federico, Lazos, Filippo, Leonardi, Stefano, MARCHETTI SPACCAMELA, Alberto, Reiffenhäuser, Rebecca
Publisher Information:
PMLR
Publication Year:
2021
Collection:
Sapienza Università di Roma: CINECA IRIS
Document Type:
Konferenz conference object
Language:
English
Relation:
info:eu-repo/semantics/altIdentifier/wos/WOS:000683104600022; ispartofbook:Proceedings of the 38th International Conference on Machine Learning; International Conference on Machine Learning; volume:139; firstpage:231; lastpage:242; numberofpages:12; serie:PROCEEDINGS OF MACHINE LEARNING RESEARCH; https://hdl.handle.net/11573/1598785
Rights:
info:eu-repo/semantics/openAccess
Accession Number:
edsbas.E719700F
Database:
BASE

Weitere Informationen

The growing need to deal with massive instances motivates the design of algorithms balancing the quality of the solution with applicability. For the latter, an important measure is the emph{adaptive complexity}, capturing the number of sequential rounds of parallel computation needed. In this work we obtain the first emph{constant factor} approximation algorithm for non-monotone submodular maximization subject to a knapsack constraint with emph{near-optimal} $O(log n)$ adaptive complexity. Low adaptivity by itself, however, is not enough: one needs to account for the total number of function evaluations (or value queries) as well. Our algorithm asks $ ilde{O}(n^2)$ value queries, but can be modified to run with only $ ilde{O}(n)$ instead, while retaining a low adaptive complexity of $O(log^2n)$. Besides the above improvement in adaptivity, this is also the first emph{combinatorial} approach with sublinear adaptive complexity for the problem and yields algorithms comparable to the state-of-the-art even for the special cases of cardinality constraints or monotone objectives. Finally, we showcase our algorithms’ applicability on real-world datasets.