We study the approximability of constraint satisfaction problems (CSPs) by linear programming (LP) relaxations. We show that for every CSP, the approximation obtained by a basic LP relaxation, is no weaker than the approximation obtained using relaxations given by \Omega( log n / (log log n)) levels of the of the Sherali-Adams hierarchy on instances of size n. It was proved by Chan et al. [FOCS 2013] that any polynomial size LP extended formulation is no stronger than relaxations obtained by a super-constant levels of the Sherali-Adams hierarchy.. Combining this with our result also implies that any polynomial size LP extended formulation is no stronger than the basic LP, which can be thought of as the base level of the Sherali-Adams hiera...
We give a precise algebraic characterisation of the power of Sherali-Adams relaxations for solvabili...
We give a precise algebraic characterisation of the power of Sherali-Adams relaxations for solvabili...
Linear and semidefinite programs are fundamental algorithmic tools, often providing conjecturallyopt...
We study the approximability of constraint satisfaction problems (CSPs) by linear programming (LP) r...
We study the approximability of constraint satisfaction problems (CSPs) by linear programming (LP) r...
We show that linear programming relaxations need sub-exponential size to beat trivial random guessin...
We show that linear programming relaxations need sub-exponential size to beat trivial random guessin...
We consider Sherali-Adams linear programming relaxations for solving valued constraint satisfaction ...
International audienceWe consider Sherali-Adams linear programming relaxations for solving valued co...
International audienceWe consider Sherali-Adams linear programming relaxations for solving valued co...
It has been shown that for a general-valued constraint language Γ the following statements are equiv...
We consider Sherali-Adams linear programming relaxations for solving valued constraint satisfaction ...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Abstract. This work considers the problem of approximating fixed pred-icate constraint satisfaction ...
We give a precise algebraic characterisation of the power of Sherali-Adams relaxations for solvabili...
We give a precise algebraic characterisation of the power of Sherali-Adams relaxations for solvabili...
Linear and semidefinite programs are fundamental algorithmic tools, often providing conjecturallyopt...
We study the approximability of constraint satisfaction problems (CSPs) by linear programming (LP) r...
We study the approximability of constraint satisfaction problems (CSPs) by linear programming (LP) r...
We show that linear programming relaxations need sub-exponential size to beat trivial random guessin...
We show that linear programming relaxations need sub-exponential size to beat trivial random guessin...
We consider Sherali-Adams linear programming relaxations for solving valued constraint satisfaction ...
International audienceWe consider Sherali-Adams linear programming relaxations for solving valued co...
International audienceWe consider Sherali-Adams linear programming relaxations for solving valued co...
It has been shown that for a general-valued constraint language Γ the following statements are equiv...
We consider Sherali-Adams linear programming relaxations for solving valued constraint satisfaction ...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Abstract. This work considers the problem of approximating fixed pred-icate constraint satisfaction ...
We give a precise algebraic characterisation of the power of Sherali-Adams relaxations for solvabili...
We give a precise algebraic characterisation of the power of Sherali-Adams relaxations for solvabili...
Linear and semidefinite programs are fundamental algorithmic tools, often providing conjecturallyopt...