Fine-Grained Completeness for Optimization in P
Karl Bringmann, Alejandro Cassis, Nick Fischer, Marvin K\"unnemann

TL;DR
This paper introduces polynomial-time analogues of classical NP optimization classes, MaxSP and MinSP, and establishes their completeness for certain problems like Inner Product, linking their complexity to the Orthogonal Vectors Hypothesis.
Contribution
It defines new classes MaxSP and MinSP for optimization problems in P and proves their completeness for problems like Inner Product, connecting their complexity to fine-grained conjectures.
Findings
Maximum/Minimum Inner Product is complete for MaxSP/MinSP under fine-grained reductions.
Strongly subquadratic algorithms for Inner Product imply faster algorithms for all MaxSP/MinSP problems.
Approximation hardness results relate to the Orthogonal Vectors Hypothesis.
Abstract
We initiate the study of fine-grained completeness theorems for exact and approximate optimization in the polynomial-time regime. Inspired by the first completeness results for decision problems in P (Gao, Impagliazzo, Kolokolova, Williams, TALG 2019) as well as the classic class MaxSNP and MaxSNP-completeness for NP optimization problems (Papadimitriou, Yannakakis, JCSS 1991), we define polynomial-time analogues MaxSP and MinSP, which contain a number of natural optimization problems in P, including Maximum Inner Product, general forms of nearest neighbor search and optimization variants of the -XOR problem. Specifically, we define MaxSP as the class of problems definable as , where is a quantifier-free first-order property over a given relational structure (with MinSP defined…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
