Li He
18 Papers
1 Citations
Li He is an academic researcher. The author has contributed to research in topics: Computer science & Dependency (UML). The author has an hindex of 1, co-authored 7 publications.
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Papers
Cross-Lingual Named Entity Recognition Based on Attention and Adversarial Training
TL;DR: This paper proposed a cross-lingual adversarial named entity recognition method based on an attention mechanism and adversarial training, using resource-rich language annotation data to migrate to low-resource languages for NER tasks and outputting changing semantic vectors through the attention mechanism to effectively solve the long sequence semantic dilution problem.
Event Detection Using a Self-Constructed Dependency and Graph Convolution Network
TL;DR: In this paper , an event detection model that uses a self-constructed dependency and graph convolution network was developed. But the results of dependency parsing are more complex, because each word corresponds to a directed edge with a dependency parsing label.
Chinese Lexical Sememe Prediction Using CilinE Knowledge
TL;DR: The authors proposed a CilinE-guided sememe prediction model which employs an existing word knowledge base CILinE to remodel the semieme prediction from relational perspective, which can be integrated into existing methods and significantly improves the prediction performance.
Progress in Research and Application of New Optical Functional Rare Earth Complexes
TL;DR: In this paper , the authors propose a method to improve the quality of the data collected by the data collection system, which is called data collection and data collection, and use it for data collection.
Self-Distillation and Pinyin Character Prediction for Chinese Spelling Correction Based on Multimodality
TL;DR: This study proposes enhancing the CSC task by introducing the pinyin character prediction task, and employs an adaptive weighting method in the pinyin character prediction task to address predictions in a more granular manner, achieving a balance between the two prediction tasks.
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