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Neural Headline Generation with Sentence-wise Optimization

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Recently, neural models have been proposed for headline generation by learning to map documents to headlines with recurrent neural networks. Nevertheless, as traditional neural network utilizes maximum likelihood estimation for parameter optimization, it essentially constrains the expected training objective within word level rather than sentence level. Moreover, the performance of model prediction significantly relies on training data distribution. To overcome these drawbacks, we employ minimum risk training strategy in this paper, which directly optimizes model parameters in sentence level with respect to evaluation metrics and leads to significant improvements for headline generation. Experiment results show that our models outperforms state-of-the-art systems on both English and Chinese headline generation tasks.

Ayana, Shiqi Shen, Yu Zhao, Zhiyuan Liu, Maosong Sun• 2016

Related benchmarks

TaskDatasetResultRank
Abstractive SummarizationGigawords (test)
ROUGE-136.54
27
SummarizationGigaword two length limit
ROUGE-1 F-Score36.54
6
SummarizationDUC 75-byte limit 2004
ROUGE-1 Recall30.41
6
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