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We are not ready yet: limitations of state-of-the-art disease named entity recognizers

Lisa Kühnel, Juliane Fluck

2022Journal of Biomedical Semantics18 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Intense research has been done in the area of biomedical natural language processing. Since the breakthrough of transfer learning-based methods, BERT models are used in a variety of biomedical and clinical applications. For the available data sets, these models show excellent results - partly exceeding the inter-annotator agreements. However, biomedical named entity recognition applied on COVID-19 preprints shows a performance drop compared to the results on test data. The question arises how well trained models are able to predict on completely new data, i.e. to generalize. RESULTS: Based on the example of disease named entity recognition, we investigate the robustness of different machine learning-based methods - thereof transfer learning - and show that current state-of-the-art methods work well for a given training and the corresponding test set but experience a significant lack of generalization when applying to new data. CONCLUSIONS: We argue that there is a need for larger annotated data sets for training and testing. Therefore, we foresee the curation of further data sets and, moreover, the investigation of continual learning processes for machine learning-based models.

Topics & Concepts

Computer scienceNamed-entity recognitionTransfer of learningArtificial intelligenceMachine learningRobustness (evolution)Training setTest setTest dataGeneralizationNatural language processingManagementMathematical analysisGeneMathematicsEconomicsProgramming languageTask (project management)ChemistryBiochemistryTopic ModelingMachine Learning in HealthcareDomain Adaptation and Few-Shot Learning
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