Multipartite Entanglement Distribution in Quantum Networks using Subgraph Complementations
Aniruddha Sen, Kenneth Goodenough, Don Towsley

TL;DR
This paper introduces a new method for distributing graph states in quantum networks using subgraph complementations, improving resource efficiency and scalability, and enhancing fidelity under noise.
Contribution
It presents a novel subgraph complementation approach for quantum state distribution, reducing resource usage and distribution time compared to prior methods.
Findings
Resource usage scales linearly with number of vertices.
Quadratic improvement in distribution time for dense graphs.
Simulation shows increased fidelity under noisy conditions.
Abstract
Quantum networks are important for quantum communication, enabling tasks such as quantum teleportation, quantum key distribution, quantum sensing, and quantum error correction, often utilizing graph states, a specific class of multipartite entangled states that can be represented by graphs. We propose a novel approach for distributing graph states across a quantum network. We show that the distribution of graph states can be characterized by a system of subgraph complementations, which we also relate to the minimum rank of the underlying graph and the degree of entanglement quantified by the Schmidt-rank of the quantum state. We analyze resource usage for our algorithm and show that it improves on the number of qubits, bits for classical communication, and EPR pairs utilized, as compared to prior work. In fact, the number of local operations and resource consumption for our approach…
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