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公开(公告)号:US20240419873A1
公开(公告)日:2024-12-19
申请号:US18739362
申请日:2024-06-11
Applicant: HUBEI UNIVERSITY
Inventor: Dunhui YU , Yan ZHANG , Hao CHEN , Wanshan ZHANG , Wenwei LIU
IPC: G06F30/27
Abstract: The invention pertains to an early detection method for network unreliable information using ensemble learning, within the field of early detection technology for unreliable network data. It involves the following steps: (1) converting input text sequences into word vector sequences; (2) inputting these word vectors into three base models—Transformer, Bi-SATT-CAPS, and BiTCN—for classifying unreliable information; (3) training and predicting with these models to generate new training and test data sets; (4) weighting and merging these new data sets to create a new training set for the meta-learner SVM; (5) training the new set with the meta-learner SVM to obtain the final classification result. This method retains the text's grammatical and structural features, using only blog posts and early comments to accurately detect unreliable information. By employing an improved weight fusion strategy, the method leverages the strengths of the three base models to enhance early detection effectiveness.