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

02/07/2017
by   Sewon Min, et al.
0

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 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.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset