Binbin Xie, Xiangpeng Wei, Baosong Yang, Huan Lin, Jun Xie, Xiao-Ling Wang, M. Zhang, Jinsong Su
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引用次数: 7
摘要
关键词生成旨在自动生成总结输入文档的短语。最近出现的ONE2SET范式(Ye et al., 2021)将关键字作为一个集合生成,并取得了具有竞争力的性能。然而,我们观察到ONE2SET输出了严重的校准误差,特别是在对∅token(意为“没有对应的关键字”)的高估上。在本文中,我们深入分析了这一限制,并找出了两个主要原因:1)并行生成必须引入过多的∅作为填充令牌到训练实例中;2)各槽分配目标的训练机制不稳定,进一步加剧了∅令牌高估。为了使模型得到很好的校准,我们提出了WR-ONE2SET,它通过自适应实例级成本加权策略和目标重新分配机制扩展了ONE2SET。前者动态地惩罚不同实例的高估槽,从而平滑不均匀的训练分布。后者改进了原有的不合理分配,减少了高估时隙的监控信号。在常用数据集上的实验结果证明了我们提出的范式的有效性和通用性。
WR-One2Set: Towards Well-Calibrated Keyphrase Generation
Keyphrase generation aims to automatically generate short phrases summarizing an input document. The recently emerged ONE2SET paradigm (Ye et al., 2021) generates keyphrases as a set and has achieved competitive performance. Nevertheless, we observe serious calibration errors outputted by ONE2SET, especially in the over-estimation of ∅ token (means “no corresponding keyphrase”). In this paper, we deeply analyze this limitation and identify two main reasons behind: 1) the parallel generation has to introduce excessive ∅ as padding tokens into training instances; and 2) the training mechanism assigning target to each slot is unstable and further aggravates the ∅ token over-estimation. To make the model well-calibrated, we propose WR-ONE2SET which extends ONE2SET with an adaptive instance-level cost Weighting strategy and a target Re-assignment mechanism. The former dynamically penalizes the over-estimated slots for different instances thus smoothing the uneven training distribution. The latter refines the original inappropriate assignment and reduces the supervisory signals of over-estimated slots. Experimental results on commonly-used datasets demonstrate the effectiveness and generality of our proposed paradigm.