Tian Chen’s research while affiliated with Central South University and other places

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Publications (3)


Personalized Quantum Federated Learning for Privacy Image Classification
  • Preprint

October 2024

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26 Reads

Jinjing Shi

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Tian Chen

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Shichao Zhang

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Xuelong Li

Quantum federated learning has brought about the improvement of privacy image classification, while the lack of personality of the client model may contribute to the suboptimal of quantum federated learning. A personalized quantum federated learning algorithm for privacy image classification is proposed to enhance the personality of the client model in the case of an imbalanced distribution of images. First, a personalized quantum federated learning model is constructed, in which a personalized layer is set for the client model to maintain the personalized parameters. Second, a personalized quantum federated learning algorithm is introduced to secure the information exchanged between the client and server.Third, the personalized federated learning is applied to image classification on the FashionMNIST dataset, and the experimental results indicate that the personalized quantum federated learning algorithm can obtain global and local models with excellent performance, even in situations where local training samples are imbalanced. The server's accuracy is 100% with 8 clients and a distribution parameter of 100, outperforming the non-personalized model by 7%. The average client accuracy is 2.9% higher than that of the non-personalized model with 2 clients and a distribution parameter of 1. Compared to previous quantum federated learning algorithms, the proposed personalized quantum federated learning algorithm eliminates the need for additional local training while safeguarding both model and data privacy.It may facilitate broader adoption and application of quantum technologies, and pave the way for more secure, scalable, and efficient quantum distribute machine learning solutions.


Fig. 6. Architecture of the QPFE-ERNIE model for sentiment classification. means concatenate two vectors.
Fig. 7. Architecture of the QPFE-ERNIE model for WSD.
Pretrained Quantum-Inspired Deep Neural Network for Natural Language Processing
  • Article
  • Full-text available

May 2024

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99 Reads

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10 Citations

IEEE Transactions on Cybernetics

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Tian Chen

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Wei Lai

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[...]

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Xuelong Li

Natural language processing (NLP) may face the inexplicable “black-box” problem of parameters and unreasonable modeling for lack of embedding of some characteristics of natural language, while the quantum-inspired models based on quantum theory may provide a potential solution. However, the essential prior knowledge and pretrained text features are often ignored at the early stage of the development of quantum-inspired models. To attacking the above challenges, a pretrained quantum-inspired deep neural network is proposed in this work, which is constructed based on quantum theory for carrying out strong performance and great interpretability in related NLP fields. Concretely, a quantum-inspired pretrained feature embedding (QPFE) method is first developed to model superposition states for words to embed more textual features. Then, a QPFE-ERNIE model is designed by merging the semantic features learned from the prevalent pretrained model ERNIE, which is verified with two NLP downstream tasks: 1) sentiment classification and 2) word sense disambiguation (WSD). In addition, schematic quantum circuit diagrams are provided, which has potential impetus for the future realization of quantum NLP with quantum device. Finally, the experiment results demonstrate QPFE-ERNIE is significantly better for sentiment classification than gated recurrent unit (GRU), BiLSTM, and TextCNN on five datasets in all metrics and achieves better results than ERNIE in accuracy, F1-score, and precision on two datasets (CR and SST), and it also has advantage for WSD over the classical models, including BERT (improves F1-score by 5.2 on average) and ERNIE (improves F1-score by 4.2 on average) and improves the F1-score by 8.7 on average compared with a previous quantum-inspired model QWSD. QPFE-ERNIE provides a novel pretrained quantum-inspired model for solving NLP problems, and it lays a foundation for exploring more quantum-inspired models in the future.

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Image encryption with quantum cellular neural network

June 2022

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129 Reads

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20 Citations

Quantum Information Processing

A novel quantum image encryption scheme is proposed based on quantum cellular neural network with quantum operations and hyper-chaotic system, aiming to optimize security, computation complexity and decrypted image definition. The quantum operations, including quantum affine transforms, quantum SWAP and quantum CNOT gates, are controlled by hyper-chaotic signals to scramble image pixel coordinates and values, respectively. From our experiments, this scheme effectively reduces the computation complexity to O(n), and can completely recover the correct decrypted images under the premise of ensuring algorithm security. In addition, each stage of processing images can be implemented with quantum circuits, and the design circuits are experimentally examined for initial quantum image preparation. This means that the proposed scheme could be potentially implemented on quantum devices.

Citations (2)


... The ability of deep learning models to extract and interpret these sophisticated patterns has led to groundbreaking advancements across various domains [21], [22], [23], [24], including NLP, computer vision, and robotics, among others [25], [26]. These achievements underscore the transformative impact of deep learning, solidifying its position as a key driver of innovation in AI and beyond [27], [28], [29]. ...

Reference:

LMCBert: An Automatic Academic Paper Rating Model Based on Large Language Models and Contrastive Learning
Pretrained Quantum-Inspired Deep Neural Network for Natural Language Processing

IEEE Transactions on Cybernetics

... In recent years, quantum information technology has achieved breakthrough progress. Researchers have proposed many effective quantum image encryption methods by combining quantum information theory with image encryption technology [7][8][9][10][11]. Quantum image encryption technology utilizes the physical properties of superposition, entanglement, and quantum state instability, and has the advantages of high efficiency, robust parallelism, and strong resistance to decryption. ...

Image encryption with quantum cellular neural network

Quantum Information Processing