SQuAD Question Answering Dataset: CS224N Assn 4

نویسندگان

  • Xin Jin
  • Milind Rao
  • Abbas Kazerouni
چکیده

We solve the contextual question answering problem, which is an essential part in many automated question-answering datasets. Recently the SQuAD dataset [1] was uploaded and there were several deep learning approaches proposed to solve this. We implement a modified version of one of them, the Dynamic Coattention model as well as simple baseline.

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تاریخ انتشار 2017