We use cookies to improve your experience with our site.

基于神经网络的标题生成研究进展

Recent Advances on Neural Headline Generation

  • 摘要: 近来,神经网络技术被应用到标题生成任务中,直接利用循环神经网络实现源文档到文档标题的映射。本文对已有方法和相关改进进行详细介绍和比较。具体来讲,对不同的编码器、解码器和训练算法对神经网络标题生成整体性能的影响进行详细对比。此外,本文对大多数现有的神经标题生成系统进行定量分析,并总结了影响标题生成系统性能的几个关键因素。同时,本文对典型的神经标题生成系统进行详细的错误分析,以获得对此类系统更进一步的了解。希望本文中列出的结果和结论有益于未来的研究工作。

     

    Abstract: Recently, neural models have been proposed for headline generation by learning to map documents to headlines with recurrent neural network. In this work, we give a detailed introduction and comparison of existing work and recent improvements in neural headline generation, with particular attention on how encoders, decoders and neural model training strategies alter the overall performance of the headline generation system. Furthermore, we perform quantitative analysis of most existing neural headline generation systems and summarize several key factors that impact the performance of headline generation systems. Meanwhile, we carry on detailed error analysis to typical neural headline generation systems in order to gain more comprehension. Our results and conclusions are hoped to benefit future research studies.

     

/

返回文章
返回