Entanglement Verification with Deep Semi-supervised Machine Learning
- URL: http://arxiv.org/abs/2308.15391v1
- Date: Tue, 29 Aug 2023 15:41:04 GMT
- Title: Entanglement Verification with Deep Semi-supervised Machine Learning
- Authors: Lifeng Zhang, Zhihua Chen and Shao-Ming Fei
- Abstract summary: We propose a deep semi-supervised learning model with a small portion of labeled data and a large portion of unlabeled data.
We verify that our model has good generalization ability and gives rise to better accuracies compared to traditional supervised learning models.
- Score: 10.587454514254423
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum entanglement lies at the heart in quantum information processing
tasks. Although many criteria have been proposed, efficient and scalable
methods to detect the entanglement of generally given quantum states are still
not available yet, particularly for high-dimensional and multipartite quantum
systems. Based on FixMatch and Pseudo-Label method, we propose a deep
semi-supervised learning model with a small portion of labeled data and a large
portion of unlabeled data. The data augmentation strategies are applied in this
model by using the convexity of separable states and performing local unitary
operations on the training data. We verify that our model has good
generalization ability and gives rise to better accuracies compared to
traditional supervised learning models by detailed examples.
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