Improving Event Duration Prediction via Time-aware Pre-training
Yang, Zonglin, Du, Xinya, Rush, Alexander, Cardie, Claire
–arXiv.org Artificial Intelligence
End-to-end models in NLP rarely encode external world knowledge about length of time. We introduce two effective models for duration prediction, which incorporate external knowledge by reading temporal-related news sentences (time-aware pre-training). Specifically, one model predicts the range/unit where the duration value falls in (R-pred); and the other predicts the exact duration value E-pred. Our best model -- E-pred, substantially outperforms previous work, and captures duration information more accurately than R-pred. We also demonstrate our models are capable of duration prediction in the unsupervised setting, outperforming the baselines.
arXiv.org Artificial Intelligence
Nov-4-2020
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