Publication | Open Access
ALBERT-BiLSTM for Sequential Metaphor Detection
10
Citations
15
References
2020
Year
Unknown Venue
EngineeringPsycholinguisticsSemanticsLarge Language ModelCorpus LinguisticsText MiningWord EmbeddingsNatural Language ProcessingApplied LinguisticsComputational LinguisticsToefl DatasetLanguage StudiesMetaphor WordsMachine TranslationNatural LanguageCognitive ScienceSequence ModellingDaily LifeNlp TaskSymbolic Linguistic RepresentationSequential Metaphor DetectionVisual MetaphorLinguistics
In our daily life, metaphor is a common way of expression. To understand the meaning of a metaphor, we should recognize the metaphor words which play important roles. In the metaphor detection task, we design a sequence labeling model based on ALBERT-LSTM-softmax. By applying this model, we carry out a lot of experiments and compare the experimental results with different processing methods, such as with different input sentences and tokens, or the methods with CRF and softmax. Then, some tricks are adopted to improve the experimental results. Finally, our model achieves a 0.707 F1-score for the all POS subtask and a 0.728 F1-score for the verb subtask on the TOEFL dataset.
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