Search Results for author: Min Wei

Found 5 papers, 3 papers with code

Computation Rate Maximization for Wireless Powered Edge Computing With Multi-User Cooperation

1 code implementation22 Jan 2024 Yang Li, Xing Zhang, Bo Lei, Qianying Zhao, Min Wei, Zheyan Qu, Wenbo Wang

Simulation results show that the performance of the proposed algorithms is comparable to that of the exhaustive search method, and the deep learning-based algorithm significantly reduces the execution time of the algorithm.

Edge-computing

Adversarial Score Distillation: When score distillation meets GAN

1 code implementation1 Dec 2023 Min Wei, Jingkai Zhou, Junyao Sun, Xuesong Zhang

Existing score distillation methods are sensitive to classifier-free guidance (CFG) scale: manifested as over-smoothness or instability at small CFG scales, while over-saturation at large ones.

Generative Adversarial Network Text to 3D

Communication Efficiency Optimization of Federated Learning for Computing and Network Convergence of 6G Networks

no code implementations28 Nov 2023 Yizhuo Cai, Bo Lei, Qianying Zhao, Jing Peng, Min Wei, Yushun Zhang, Xing Zhang

In this paper, to improve the communication efficiency of federated learning in complex networks, we study the communication efficiency optimization of federated learning for computing and network convergence of 6G networks, methods that gives decisions on its training process for different network conditions and arithmetic power of participating devices in federated learning.

Federated Learning

Super-Resolution Neural Operator

1 code implementation CVPR 2023 Min Wei, Xuesong Zhang

We propose Super-resolution Neural Operator (SRNO), a deep operator learning framework that can resolve high-resolution (HR) images at arbitrary scales from the low-resolution (LR) counterparts.

Dimensionality Reduction Operator learning +1

Mutual Information-Based Unsupervised Feature Transformation for Heterogeneous Feature Subset Selection

no code implementations24 Nov 2014 Min Wei, Tommy W. S. Chow, Rosa H. M. Chan

Conventional mutual information (MI) based feature selection (FS) methods are unable to handle heterogeneous feature subset selection properly because of data format differences or estimation methods of MI between feature subset and class label.

feature selection

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