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Finding semi-optimal measurements for entanglement detection using autoencoder neural networks

Mohammad Yosefpor, Mohammad Reza Mostaan, Sadegh Raeisi

2020Quantum Science and Technology12 citationsDOIOpen Access PDF

Abstract

Abstract Entanglement is one of the key resources of quantum information science which makes identification of entangled states essential to a wide range of quantum technologies and phenomena. This problem is however both computationally and experimentally challenging. Here we use autoencoder neural networks to find semi-optimal set of incomplete measurements that are most informative for the detection of entangled states . We show that it is possible to find high-performance entanglement detectors with as few as three measurements. Also, with the complete information of the state, we develop a neural network that can identify all two-qubits entangled states almost perfectly. This result paves the way for automatic development of efficient entanglement witnesses and entanglement detection using machine learning techniques.

Topics & Concepts

AutoencoderQuantum entanglementComputer scienceArtificial neural networkSet (abstract data type)Identification (biology)Artificial intelligenceKey (lock)QuantumRange (aeronautics)DetectorDeep learningQuantum sensorDeep neural networksQuantum stateQuantum informationPattern recognition (psychology)Theoretical computer scienceAlgorithmEntanglement witnessMultipartite entanglementInformation theoryEncoding (memory)Quantum Information and CryptographyQuantum Mechanics and ApplicationsQuantum Computing Algorithms and Architecture