Understanding Subtitles by Character-Level Sequence-to-Sequence Learning

@article{Zhang2017UnderstandingSB,
  title={Understanding Subtitles by Character-Level Sequence-to-Sequence Learning},
  author={Haijun Zhang and Jingxuan Li and Yuzhu Ji and Heng Yue},
  journal={IEEE Transactions on Industrial Informatics},
  year={2017},
  volume={13},
  pages={616-624}
}
This paper presents a character-level seque-nce-to-sequence learning method, RNNembed. This method allows the system to read raw characters, instead of words generated by preprocessing steps, into a pure single neural network model under an end-to-end framework. Specifically, we embed a recurrent neural network into an encoder–decoder framework and generate character-level sequence representation as input. The dimension of input feature space can be significantly reduced as well as avoiding the… CONTINUE READING
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