The weighted MAX k-CUT problem consists of finding a k-partition of a given weighted undirected graph G(V, E), such that the sum of the weights of the crossing edges is maximized. The problem is of particular interest as it has a multitude of practical applications. We present a formulation of the weighted MAX k-CUT suitable for running the quantum approximate optimization algorithm (QAOA) on noisy intermediate scale quantum (NISQ) devices to get approximate solutions. The new formulation uses a binary encoding that requires only |V|log2k qubits. The contributions of this paper are as follows: (i) a novel decomposition of the phase-separation operator based on the binary encoding into basis gates is provided for the MAX k-CUT problem for k>...
Many quantum algorithms seek to output a specific bitstring solving the problem of interest-or a few...
Today’s quantum computers are limited in their capabilities, e.g., the size of executable quantum ci...
Finding high-quality parameters is a central obstacle to using the quantum approximate optimization ...
The weighted MAX k-CUT problem consists of finding a k-partition of a given weighted undirected grap...
Quantum computers are devices, which allow more efficient solutions of problems as compared to their...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
The Quantum Approximate Optimization Algorithm (QAOA) is one of the promising near-term algorithms d...
Given an undirected unweighted graph, the 2-MaxCut problem can be stated as the problem of partitio...
Given an undirected, unweighted graph with n vertices and m edges, the maximum cut problem is to fin...
Abstract We compare the performance of the Quantum Approximate Optimization Algorithm (QAOA) with st...
Maximum cut (Max-Cut) problem is one of the most important combinatorial optimization problems becau...
Approximate combinatorial optimisation has emerged as one of the most promising application areas fo...
We compare the performance of a quantum local algorithm to a similar classical counterpart on a well...
A quantum approximate optimization algorithm (QAOA) is a polynomial-time approximate optimization al...
The Quantum Max Cut (QMC) problem has emerged as a test-problem for designing approximation algorith...
Many quantum algorithms seek to output a specific bitstring solving the problem of interest-or a few...
Today’s quantum computers are limited in their capabilities, e.g., the size of executable quantum ci...
Finding high-quality parameters is a central obstacle to using the quantum approximate optimization ...
The weighted MAX k-CUT problem consists of finding a k-partition of a given weighted undirected grap...
Quantum computers are devices, which allow more efficient solutions of problems as compared to their...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
The Quantum Approximate Optimization Algorithm (QAOA) is one of the promising near-term algorithms d...
Given an undirected unweighted graph, the 2-MaxCut problem can be stated as the problem of partitio...
Given an undirected, unweighted graph with n vertices and m edges, the maximum cut problem is to fin...
Abstract We compare the performance of the Quantum Approximate Optimization Algorithm (QAOA) with st...
Maximum cut (Max-Cut) problem is one of the most important combinatorial optimization problems becau...
Approximate combinatorial optimisation has emerged as one of the most promising application areas fo...
We compare the performance of a quantum local algorithm to a similar classical counterpart on a well...
A quantum approximate optimization algorithm (QAOA) is a polynomial-time approximate optimization al...
The Quantum Max Cut (QMC) problem has emerged as a test-problem for designing approximation algorith...
Many quantum algorithms seek to output a specific bitstring solving the problem of interest-or a few...
Today’s quantum computers are limited in their capabilities, e.g., the size of executable quantum ci...
Finding high-quality parameters is a central obstacle to using the quantum approximate optimization ...