Derandomized Graph Product Results using the Low Degree Long Code
Irit Dinur, Prahladh Harsha, Srikanth Srinivasan, Girish Varma

TL;DR
This paper extends derandomization techniques using the low-degree long code to smaller subgraphs in graph product settings, improving hardness of approximation results for graph coloring.
Contribution
It demonstrates that derandomization results can be applied to smaller subgraphs, enhancing existing graph product and hardness of approximation results.
Findings
Smaller subgraphs exhibit properties similar to larger ones in independent set approximation.
Majority is stablest results hold for smaller subgraphs, indicating influential coordinates.
Improved reduction from Unique Games to graph coloring leads to better hardness of approximation.
Abstract
In this paper, we address the question of whether the recent derandomization results obtained by the use of the low-degree long code can be extended to other product settings. We consider two settings: (1) the graph product results of Alon, Dinur, Friedgut and Sudakov [GAFA, 2004] and (2) the "majority is stablest" type of result obtained by Dinur, Mossel and Regev [SICOMP, 2009] and Dinur and Shinkar [In Proc. APPROX, 2010] while studying the hardness of approximate graph coloring. In our first result, we show that there exists a considerably smaller subgraph of which exhibits the following property (shown for by Alon et al.): independent sets close in size to the maximum independent set are well approximated by dictators. The "majority is stablest" type of result of Dinur et al. and Dinur and Shinkar shows that if there exist two sets of…
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