Entanglement detection with classical deep neural networks
Julio Ureña, Antonio Sojo, Juan Bermejo-Vega, Daniel Manzano
Abstract
In this study, we introduce an autonomous method for addressing the detection and classification of quantum entanglement, a core element of quantum mechanics that has yet to be fully understood. We employ a multi-layer perceptron to effectively identify entanglement in both two- and three-qubit systems. Our technique yields impressive detection results, achieving nearly perfect accuracy for two-qubit systems and over $$90\%$$ accuracy for three-qubit systems. Additionally, our approach successfully categorizes three-qubit entangled states into distinct groups with a success rate of up to $$77\%$$ . These findings indicate the potential for our method to be applied to larger systems, paving the way for advancements in quantum information processing applications.