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Coherent Comment Generation for Chinese Articles with a Graph-to-Sequence Model

机译:图形到序列模型的中文文章连贯注释生成

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摘要

Automatic article commenting is helpful in encouraging user engagement and interaction on online news platforms. However, the news documents are usually too long for traditional encoder-decoder based models, which often results in general and irrelevant comments. In this paper, we propose to generate comments with a graph-to-sequence model that models the input news as a topic interaction graph. By organizing the article into graph structure, our model can better understand the internal structure of the article and the connection between topics, which makes it better able to understand the story. We collect and release a large scale news-comment corpus from a popular Chinese online news platform Tencent Kuaibao.~1 Extensive experiment results show that our model can generate much more coherent and informative comments compared with several strong baseline models.~2
机译:自动文章评论有助于鼓励用户在在线新闻平台上参与和互动。然而,对于传统的基于编码器-解码器的模型而言,新闻文档通常太长,这通常会导致笼统和不相关的评论。在本文中,我们建议使用图形到序列模型生成注释,该模型将输入新闻建模为主题交互图。通过将文章组织成图结构,我们的模型可以更好地理解文章的内部结构以及主题之间的联系,从而更好地理解故事。我们从一个流行的中国在线新闻平台腾讯快报收集并发布了大规模的新闻评论语料库。〜1广泛的实验结果表明,与几种强大的基线模型相比,我们的模型可以产生更加连贯和信息丰富的评论。

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