Patents by Inventor Jiqiang Liu

Jiqiang Liu has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11935137
    Abstract: A method for distributing an equity reward for federated learning based on an equity theory includes the following steps: applying Adams' equity theory to federated learning, analyzing, by a participant, all factors invested in a federated task comprehensively, then giving an expected reward for this task, calculating, by the task publisher, the reputation of the participant; participating, by the participant, in each round of a training task using a local data to evaluate data contribution, model contribution, and a waiting-time allowance of the participant, then combining contribution results of the three factors to evaluate the contribution of the participant; after a global model converges, dynamically adjusting weights of the three factors according to an objective function of the equity reward, with a goal that an actual reward of the participant is as close as possible to the expected reward, and obtaining and distributing the actual reward of the participant.
    Type: Grant
    Filed: July 24, 2023
    Date of Patent: March 19, 2024
    Assignee: BEIJING JIAOTONG UNIVERSITY
    Inventors: Wei Wang, Guorong Chen, Pengrui Liu, Xiaoting Lyu, Xiangrui Xu, Chao Li, Li Duan, Dawei Zhang, Jiqiang Liu, Yi Jin, Yidong Li
  • Publication number: 20240046372
    Abstract: A method for distributing an equity reward for federated learning based on an equity theory includes the following steps: applying Adams' equity theory to federated learning, analyzing, by a participant, all factors invested in a federated task comprehensively, then giving an expected reward for this task, calculating, by the task publisher, the reputation of the participant; participating, by the participant, in each round of a training task using a local data to evaluate data contribution, model contribution, and a waiting-time allowance of the participant, then combining contribution results of the three factors to evaluate the contribution of the participant; after a global model converges, dynamically adjusting weights of the three factors according to an objective function of the equity reward, with a goal that an actual reward of the participant is as close as possible to the expected reward, and obtaining and distributing the actual reward of the participant.
    Type: Application
    Filed: July 24, 2023
    Publication date: February 8, 2024
    Applicant: BEIJING JIAOTONG UNIVERSITY
    Inventors: Wei WANG, Guorong CHEN, Pengrui LIU, Xiaoting LYU, Xiangrui XU, Chao LI, Li DUAN, Dawei ZHANG, Jiqiang LIU, Yi JIN, Yidong LI
  • Patent number: 11619556
    Abstract: A construction monitoring method and system for a V-shaped column in an underground foundation pit, a terminal and a storage medium can include the following steps: acquiring different stress-related data at a plurality of preset positions of stand columns in real time; and analyzing and judging whether the change rate of the stress-related data exceeds a preset change rate range or not or whether the stress-related data exceeds a preset stress-related data range or not.
    Type: Grant
    Filed: August 25, 2022
    Date of Patent: April 4, 2023
    Assignee: SHENZHEN UNIVERSITY
    Inventors: Xiangsheng Chen, Jun Shen, Xiaohua Bao, Min Zhu, Hongzhi Cui, Yong Zhao, Changqing Xia, Jiqiang Liu
  • Publication number: 20210200963
    Abstract: The present disclosure provides a machine translation model training method, apparatus, electronic device and storage medium, which relates to the technical field of natural language processing. A specific implementation solution is as follows: selecting, from parallel corpuses, a set of samples whose translation quality satisfies a preset requirement and which have universal-field features and/or target-field features, to constitute a first training sample set; selecting, from the parallel corpuses, a set of samples whose translation quality satisfies a preset requirement and which do not have universal-field features and target-field features, to constitute a second training sample set; training an encoder in the machine translation model in the target field, a discriminator configured in encoding layers of the encoder, and the encoder and a decoder in the machine translation model in the target field in turn with the first training sample set and second training sample set, respectively.
    Type: Application
    Filed: March 12, 2021
    Publication date: July 1, 2021
    Inventors: Ruiqing Zhang, Chuanqiang Zhang, Jiqiang Liu, Zhongjun He, Zhi Li, Hua Wu