Qiwei BiHaoyuan LiKun LuHanfang Yang
Previous abstractive methods apply sequence-to-sequence structures to generate summary without a module to assist the system to detect vital mentions and relationships within a document. To address this problem, we utilize semantic graph to boost the generation performance. Firstly, we extract important entities from each document and then establish a graph inspired by the idea of distant supervision \citep{mintz-etal-2009-distant}. Then, we combine a Bi-LSTM with a graph encoder to obtain the representation of each graph node. A novel neural decoder is presented to leverage the information of such entity graphs. Automatic and human evaluations show the effectiveness of our technique.
Atif KhanNaomie SalimYogan Jaya Kumar
Atif KhanNaomie SalimHaleem Farman
Atif KhanNaomie SalimWaleed ReafeeAnupong SukprasertYogan Jaya Kumar