Linear Space Streaming Lower Bounds for Approximating CSPs
Chi-Ning Chou, Alexander Golovnev, Madhu Sudan, Ameya Velingker, Santhoshini Velusamy

TL;DR
This paper establishes linear space lower bounds for approximating constraint satisfaction problems in streaming models, extending prior results to broader classes and achieving optimal hardness for Max k-LIN mod q.
Contribution
It proves that improving trivial approximations for CSPs in streaming requires linear space, extending the inapproximability results to Max k-LIN mod q with optimal bounds.
Findings
Any non-trivial approximation of CSPs requires linear space in streaming.
Extended inapproximability results to Max k-LIN mod q for k>2 and q>2.
Achieved optimal hardness results for these classes of CSPs.
Abstract
We consider the approximability of constraint satisfaction problems in the streaming setting. For every constraint satisfaction problem (CSP) on variables taking values in , we prove that improving over the trivial approximability by a factor of requires space even on instances with constraints. We also identify a broad subclass of problems for which any improvement over the trivial approximability requires space. The key technical core is an optimal, -inapproximability for the Max -LIN- problem, which is the Max CSP problem where every constraint is given by a system of linear equations over variables. Our work builds on and extends the breakthrough work of Kapralov and Krachun (Proc. STOC 2019) who showed a linear lower bound on any non-trivial approximation of the MaxCut problem…
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