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Question Answering through Transfer Learning from Large Fine-grained Supervision Data

机译:通过大型细粒度监管数据的转移学习进行问答

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We show that the task of question answering (QA) can significantly benefit from the transfer learning of models trained on a different large, fine-grained QA dataset. We achieve the state of the art in two well-studied QA datasets, WikiQA and SemEval-2016 (Task 3A), through a basic transfer learning technique from SQuAD. For WikiQA, our model outperforms the previous best model by more than 8%. We demonstrate that finer supervision provides better guidance for learning lexical and syntactic information than coarser supervision, through quantitative results and visual analysis. We also show that a similar transfer learning procedure achieves the state of the art on an entailment task.
机译:我们表明,问题解答(QA)的任务可以大大受益于在不同的大型,细粒度QA数据集上训练的模型的转移学习。通过使用来自SQuAD的基本迁移学习技术,我们在两个经过充分研究的QA数据集WikiQA和SemEval-2016(任务3A)中达到了最先进的水平。对于WikiQA,我们的模型比以前的最佳模型高出8%以上。通过定量结果和视觉分析,我们证明更好的监督比粗糙的监督为学习词汇和句法信息提供了更好的指导。我们还表明,类似的迁移学习过程可在一项任务上达到最新水平。

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