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AREDSUM: Adaptive Redundancy-Aware Iterative Sentence Ranking for Extractive Document Summarization

机译:Aredsum:自适应冗余感知迭代句子排名,以进行提取文件摘要

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摘要

Redundancy-aware extractive summarization systems score the redundancy of the sentences to be included in a summary either jointly with their salience information or separately as an additional sentence scoring step. Previous work shows the efficacy of jointly scoring and selecting sentences with neural sequence generation models. It is, however, not well-understood if the gain is due to better encoding techniques or better redundancy reduction approaches. Similarly, the contribution of salience versus diversity components on the created summary is not studied well. Building on the state-of-the-art encoding methods for summarization, we present two adaptive learning models: ARedSum-Seq that jointly considers salience and novelty during sentence selection; and a two-step ARedSum-Ctx that scores salience first, then learns to balance salience and redundancy, enabling the measurement of the impact of each aspect. Empirical results on CNN/DailyMail and NYT50 datasets show that by modeling diversity explicitly in a separate step, ARedSum-Ctx achieves significantly better performance than ARedSum-Seq as well as state-of-the-art extractive summarization baselines.
机译:冗余感知的进取摘要系统将句子的冗余与其蓬勃的信息共同或单独作为额外的句子评分步骤进行分数。以前的工作表明,共同评分和选择与神经序列生成模型的疑问的功效。然而,如果增益是由于更好的编码技术或更好的冗余降低方法,则是不太理解的。同样,没有良好地研究了Parience与多样性组件的贡献。建立最先进的编码方法总结,我们提出了两个自适应学习模型:Aredsum-SEQ,共同考虑句子选择期间的显着和新奇;而且,首先评分Pariences的两步Aredsum-CTX,然后学会平衡Parience和冗余,从而能够测量每个方面的影响。 CNN / Dailymail和NYT50数据集的经验结果表明,通过在单独的步骤中明确建模多样性,AredSum-CTX比Aledsum-SEQ和最先进的提取摘要基线实现显着更好的性能。

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