Chinese Clinical Named Entity Recognition From Electronic Medical Records Based on Multisemantic Features by Using Robustly Optimized Bidirectional Encoder Representation From Transformers Pretraining Approach Whole Word Masking and Convolutional Neural Networks: Model Development and Validation

Research article (JMIR Medical Informatics, 2023) · cited 12× · AI/ML
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Chinese Clinical Named Entity Recognition From Electronic Medical Records Based on Multisemantic Features by Using Robustly Optimized Bidirectional Encoder Representation From Transformers Pretraining Approach Whole Word Masking and Convolutional Neural Networks: Model Development and Validation

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Chinese Clinical Named Entity Recognition From Electronic Medical Records Based on Multisemantic Features by Using Robustly Optimized Bidirectional Encoder Representation From Transformers Pretraining Approach Whole Word Masking and Convolutional Neural Networks: Model Development and Validation is a scholarly article[1].

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  • Chinese Clinical Named Entity Recognition From Electronic Medical Records Based on Multisemantic Features by Using Robustly Optimized Bidirectional Encoder Representation From Transformers Pretraining Approach Whole Word Masking and Convolutional Neural Networks: Model Development and Validation's instance of is recorded as scholarly article[2].

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APA 4ort.xyz Knowledge Graph. (2026). Chinese Clinical Named Entity Recognition From Electronic Medical Records Based on Multisemantic Features by Using Robustly Optimized Bidirectional Encoder Representation From Transformers Pretraining Approach Whole Word Masking and Convolutional Neural Networks: Model Development and Validation. Retrieved May 24, 2026, from https://4ort.xyz/entity/chinese-clinical-named-entity-recognition-from-electronic-medical-records-based-on-multisemantic-features-by-using-robus
MLA “Chinese Clinical Named Entity Recognition From Electronic Medical Records Based on Multisemantic Features by Using Robustly Optimized Bidirectional Encoder Representation From Transformers Pretraining Approach Whole Word Masking and Convolutional Neural Networks: Model Development and Validation.” 4ort.xyz Knowledge Graph, 4ort.xyz, 24 May. 2026, https://4ort.xyz/entity/chinese-clinical-named-entity-recognition-from-electronic-medical-records-based-on-multisemantic-features-by-using-robus.
BibTeX @misc{4ortxyz_chinese-clinical-named-entity-recognition-from-electronic-medical-records-based-on-multisemantic-features-by-using-robus_2026, author = {{4ort.xyz Knowledge Graph}}, title = {{Chinese Clinical Named Entity Recognition From Electronic Medical Records Based on Multisemantic Features by Using Robustly Optimized Bidirectional Encoder Representation From Transformers Pretraining Approach Whole Word Masking and Convolutional Neural Networks: Model Development and Validation}}, year = {2026}, url = {https://4ort.xyz/entity/chinese-clinical-named-entity-recognition-from-electronic-medical-records-based-on-multisemantic-features-by-using-robus}, note = {Accessed: 2026-05-24}}
LLM prompt According to 4ort.xyz Knowledge Graph (aggregator of Wikidata, Wikipedia, and authoritative open-data sources): Chinese Clinical Named Entity Recognition From Electronic Medical Records Based on Multisemantic Features by Using Robustly Optimized Bidirectional Encoder Representation From Transformers Pretraining Approach Whole Word Masking and Convolutional Neural Networks: Model Development and Validation — https://4ort.xyz/entity/chinese-clinical-named-entity-recognition-from-electronic-medical-records-based-on-multisemantic-features-by-using-robus (retrieved 2026-05-24)

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