Publication | Open Access
Semi-supervised sequence tagging with bidirectional language models
111
Citations
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References
2017
Year
Unknown Venue
Structured PredictionEngineeringTaggingMachine LearningPart-of-speech TaggingText MiningWord EmbeddingsNatural Language ProcessingData ScienceComputational LinguisticsEntity RecognitionLanguage StudiesLanguage ModelsNamed-entity RecognitionMachine TranslationSemi-supervised SequenceSequence ModellingNlp TaskDeep LearningPre-trained Word EmbeddingsRecurrent NetworkLinguisticsChunkingPo Tagging
Pre-trained word embeddings learned from unlabeled text have become a standard component of neural network architectures for NLP tasks. However, in most cases, the recurrent network that operates on word-level representations to produce context sensitive representations is trained on relatively little labeled data. In this paper, we demonstrate a general semi-supervised approach for adding pretrained context embeddings from bidirectional language models to NLP systems and apply it to sequence labeling tasks. We evaluate our model on two standard datasets for named entity recognition (NER) and chunking, and in both cases achieve state of the art results, surpassing previous systems that use other forms of transfer or joint learning with additional labeled data and task specific gazetteers.
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