Bibliographic Information: Bhangale, A., Khot, S., Liu, Y. P., & Minzer, D. (2024). On Approximability of Satisfiable k-CSPs: VII. arXiv preprint arXiv:2411.15136.
Research Objective: This paper investigates the approximability of k-ary constraint satisfaction problems (k-CSPs) on satisfiable instances, aiming to characterize the conditions under which efficient approximation algorithms exist.
Methodology: The authors employ tools from theoretical computer science, particularly focusing on the analysis of dictatorship tests and the properties of distributions related to CSPs. They utilize techniques like Cauchy-Schwarz inequality, random restrictions, and induction to prove their results.
Key Findings: The paper proves Conjecture 1.2 from [BKM22], stating that a distribution µ over a k-ary domain allows for efficient approximation of the corresponding CSP if and only if µ does not admit an Abelian embedding. This finding builds upon previous work that established this result for k=3. The paper also proves several extensions of this result, including local inverse theorems under milder assumptions on the distribution µ.
Main Conclusions: The absence of Abelian embeddings in the distribution associated with a CSP instance is a crucial factor determining its approximability. This result provides a significant step towards a more complete understanding of the approximability of CSPs, particularly in the context of satisfiable instances.
Significance: This work contributes significantly to the field of computational complexity, specifically to the study of approximation algorithms for CSPs. It extends our understanding of the boundaries between tractable and intractable problems within this domain.
Limitations and Future Research: The paper primarily focuses on distributions without Abelian embeddings. Future research could explore the approximability of k-CSPs associated with distributions that do admit Abelian embeddings, potentially leading to new insights and algorithmic techniques.
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by Amey Bhangal... lúc arxiv.org 11-25-2024
https://arxiv.org/pdf/2411.15136.pdfYêu cầu sâu hơn