Zero trial learning method and device based on semantic knowledge graph propagation
The invention belongs to the technical field of machine learning, and discloses a zero trial learning method and device based on semantic knowledge graph propagation. Visible sample data and unseen sample data are acquired in an ImageNet data set, a model is trained based on the CNN model, a modific...
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Format: | Patent |
Sprache: | chi ; eng |
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Zusammenfassung: | The invention belongs to the technical field of machine learning, and discloses a zero trial learning method and device based on semantic knowledge graph propagation. Visible sample data and unseen sample data are acquired in an ImageNet data set, a model is trained based on the CNN model, a modification cost function and an aggregation loss function, and the trained CNN model is obtained; setting an optimization function based on the GCN model, adding the feature constraint item to the optimization function to obtain a CGCN model, and training the CGCN model by adopting a self-supervision mode to obtain a trained CGCN model; and setting a final loss function based on the AE model, the matching loss function and the constrained loss function, and training the AE model based on the final loss function to obtain a trained AE model. The problem of distribution drift in the zero trial learning process is relieved, and the accuracy of zero trial learning model verification is improved.
本申请属于机器学习技术领域,公开了一种基于语义知识图传播 |
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