论文标题

有吸引力还是忠实?受欢迎程度增强了灵感标题一代的学习

Attractive or Faithful? Popularity-Reinforced Learning for Inspired Headline Generation

论文作者

Song, Yun-Zhu, Shuai, Hong-Han, Yeh, Sung-Lin, Wu, Yi-Lun, Ku, Lun-Wei, Peng, Wen-Chih

论文摘要

随着在线媒体资源和发布新闻的快速扩散,对于吸引读者吸引新闻文章的头条变得越来越重要,因为用户可能会被大量信息所淹没。在本文中,我们产生了灵感的头条新闻,以保留新闻文章的性质并同时引起读者的注意。受启发的标题生成的任务可以视为标题生成(HG)任务的一种特定形式,重点是从给定的新闻文章中创建一个有吸引力的标题。为了产生灵感的头条新闻,我们提出了一个新颖的框架,称为“受欢迎程度增强的学习启发性头条新闻”(PORL-HG)。 PORL-HG用1)流行主题注意(PTA)来利用提取性吸收性架构(PTA),以指导提取器从文章中选择有吸引力的句子和2)指导抽象器重写有吸引力的句子的受欢迎程度预测指标。此外,由于提取器的句子选择不是可区分的,因此使用加固学习的技术(RL)用于弥合差距,从受欢迎程度得分预测指标获得的奖励。通过定量和定性实验,我们表明,根据人类(71.03%)和预测因子(至少27.60%)评估的吸引力,所提出的PORL-HG显着超过了最新的标题生成模型,而PORL-HG的忠诚也与国家的忠诚度相当。

With the rapid proliferation of online media sources and published news, headlines have become increasingly important for attracting readers to news articles, since users may be overwhelmed with the massive information. In this paper, we generate inspired headlines that preserve the nature of news articles and catch the eye of the reader simultaneously. The task of inspired headline generation can be viewed as a specific form of Headline Generation (HG) task, with the emphasis on creating an attractive headline from a given news article. To generate inspired headlines, we propose a novel framework called POpularity-Reinforced Learning for inspired Headline Generation (PORL-HG). PORL-HG exploits the extractive-abstractive architecture with 1) Popular Topic Attention (PTA) for guiding the extractor to select the attractive sentence from the article and 2) a popularity predictor for guiding the abstractor to rewrite the attractive sentence. Moreover, since the sentence selection of the extractor is not differentiable, techniques of reinforcement learning (RL) are utilized to bridge the gap with rewards obtained from a popularity score predictor. Through quantitative and qualitative experiments, we show that the proposed PORL-HG significantly outperforms the state-of-the-art headline generation models in terms of attractiveness evaluated by both human (71.03%) and the predictor (at least 27.60%), while the faithfulness of PORL-HG is also comparable to the state-of-the-art generation model.

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