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Two-Encoder Pointer-Generator Network for Summarizing Segments of Long Articles

机译:用于汇总长文章分段的两编码器指针生成器网络

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Usually long documents contain many sections and segments. In Wikipedia, one article can usually be divided into sections and one section can be divided into segments. But although one article is already divided into smaller segments, one segment can still be too long to read. So, we consider that segments should have a short summary for readers to grasp a quick view of the segment. This paper discusses applying neural summarization models including Seq2Seq model and pointer generator network model to segment summarization. These models for summarization can take target segments as the only input to the model. However, in our case, it is very likely that the remaining segments in the same article contain descriptions related to the target segment. Therefore, we propose several ways to extract an additional sequence from the whole article and then combine with the target segment, to be supplied as the input for summarization. We compare the results against the original models without additional sequences. Furthermore, we propose a new model that uses two encoders to process the target segment and additional sequence separately. Our results show our two-encoder model outperforms the original models in terms of ROGUE and METEOR scores.
机译:通常,长文档包含许多节和段。在Wikipedia中,通常可以将一篇文章分为多个部分,而将一个章节分为多个部分。但是,尽管一篇文章已经分为较小的部分,但其中一个部分仍可能太长而无法阅读。因此,我们认为细分受众群应该有简短的摘要,以便读者快速了解细分受众群。本文讨论了将包括Seq2Seq模型和指针生成器网络模型在内的神经摘要模型应用于分段摘要。这些汇总模型可以将目标细分作为模型的唯一输入。但是,就我们而言,同一文章中的其余细分很可能包含与目标细分相关的描述。因此,我们提出了几种方法来从整篇文章中提取一个附加序列,然后与目标片段组合,以作为摘要的输入。我们将结果与没有附加序列的原始模型进行比较。此外,我们提出了一个新模型,该模型使用两个编码器分别处理目标片段和附加序列。我们的结果表明,在ROGUE和METEOR得分方面,我们的两种编码器模型优于原始模型。

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