A Subquadratic Approximation Scheme for Partition

The subject of this paper is the time complexity of approximating Knapsack, Subset Sum, Partition, and some other related problems. The main result is an \(\widetilde{O}(n+1/\varepsilon^{5/3})\) time randomized FPTAS for Partition, which is derived from a certain relaxed form of a randomized FPTAS f...

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Published inarXiv.org
Main Authors Mucha, Marcin, Węgrzycki, Karol, Włodarczyk, Michał
Format Paper Journal Article
LanguageEnglish
Published Ithaca Cornell University Library, arXiv.org 06.05.2019
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ISSN2331-8422
DOI10.48550/arxiv.1804.02269

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Abstract The subject of this paper is the time complexity of approximating Knapsack, Subset Sum, Partition, and some other related problems. The main result is an \(\widetilde{O}(n+1/\varepsilon^{5/3})\) time randomized FPTAS for Partition, which is derived from a certain relaxed form of a randomized FPTAS for Subset Sum. To the best of our knowledge, this is the first NP-hard problem that has been shown to admit a subquadratic time approximation scheme, i.e., one with time complexity of \(O((n+1/\varepsilon)^{2-\delta})\) for some \(\delta>0\). To put these developments in context, note that a quadratic FPTAS for \partition has been known for 40 years. Our main contribution lies in designing a mechanism that reduces an instance of Subset Sum to several simpler instances, each with some special structure, and keeps track of interactions between them. This allows us to combine techniques from approximation algorithms, pseudo-polynomial algorithms, and additive combinatorics. We also prove several related results. Notably, we improve approximation schemes for 3SUM, (min,+)-convolution, and Tree Sparsity. Finally, we argue why breaking the quadratic barrier for approximate Knapsack is unlikely by giving an \(\Omega((n+1/\varepsilon)^{2-o(1)})\) conditional lower bound.
AbstractList The subject of this paper is the time complexity of approximating Knapsack, Subset Sum, Partition, and some other related problems. The main result is an $\widetilde{O}(n+1/\varepsilon^{5/3})$ time randomized FPTAS for Partition, which is derived from a certain relaxed form of a randomized FPTAS for Subset Sum. To the best of our knowledge, this is the first NP-hard problem that has been shown to admit a subquadratic time approximation scheme, i.e., one with time complexity of $O((n+1/\varepsilon)^{2-\delta})$ for some $\delta>0$. To put these developments in context, note that a quadratic FPTAS for \partition has been known for 40 years. Our main contribution lies in designing a mechanism that reduces an instance of Subset Sum to several simpler instances, each with some special structure, and keeps track of interactions between them. This allows us to combine techniques from approximation algorithms, pseudo-polynomial algorithms, and additive combinatorics. We also prove several related results. Notably, we improve approximation schemes for 3SUM, (min,+)-convolution, and Tree Sparsity. Finally, we argue why breaking the quadratic barrier for approximate Knapsack is unlikely by giving an $\Omega((n+1/\varepsilon)^{2-o(1)})$ conditional lower bound.
The subject of this paper is the time complexity of approximating Knapsack, Subset Sum, Partition, and some other related problems. The main result is an \(\widetilde{O}(n+1/\varepsilon^{5/3})\) time randomized FPTAS for Partition, which is derived from a certain relaxed form of a randomized FPTAS for Subset Sum. To the best of our knowledge, this is the first NP-hard problem that has been shown to admit a subquadratic time approximation scheme, i.e., one with time complexity of \(O((n+1/\varepsilon)^{2-\delta})\) for some \(\delta>0\). To put these developments in context, note that a quadratic FPTAS for \partition has been known for 40 years. Our main contribution lies in designing a mechanism that reduces an instance of Subset Sum to several simpler instances, each with some special structure, and keeps track of interactions between them. This allows us to combine techniques from approximation algorithms, pseudo-polynomial algorithms, and additive combinatorics. We also prove several related results. Notably, we improve approximation schemes for 3SUM, (min,+)-convolution, and Tree Sparsity. Finally, we argue why breaking the quadratic barrier for approximate Knapsack is unlikely by giving an \(\Omega((n+1/\varepsilon)^{2-o(1)})\) conditional lower bound.
Author Węgrzycki, Karol
Mucha, Marcin
Włodarczyk, Michał
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BackLink https://doi.org/10.1137/1.9781611975482.5$$DView published paper (Access to full text may be restricted)
https://doi.org/10.48550/arXiv.1804.02269$$DView paper in arXiv
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SubjectTerms Algorithms
Approximation
Combinatorial analysis
Complexity
Computer Science - Data Structures and Algorithms
Convolution
Lower bounds
Mathematical analysis
Partitions
Polynomials
Randomization
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Title A Subquadratic Approximation Scheme for Partition
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