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Topic-Guided Coherence Modeling for Sentence Ordering by Preserving Global and Local Information

机译:通过保留全局和局部信息进行句子排序的主题指导一致性模型

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We propose a novel topic-guided coherence modeling (TGCM) for sentence ordering. Our attention based pointer decoder directly utilize sentence vectors in a permutation-invariant manner, without being compressed into a single fixed-length vector as the paragraph representation. Thus, TGCM can improve global dependencies among sentences and preserve relatively informative paragraph-level semantics. Moreover, to predict the next sentence, we capture topic-enhanced sentence-pair interactions between the current predicted sentence and each next-sentence candidate. With the coherent topical context matching, we promote local dependencies that help identify the tight semantic connections for sentence ordering. The experimental results show that TGCM outperforms state-of-the-art models from various perspectives.
机译:我们提出了一种新颖的主题指导的连贯建模(TGCM),用于句子排序。我们基于注意力的指针解码器以排列不变的方式直接利用句子向量,而没有被压缩成单个固定长度的向量作为段落表示。因此,TGCM可以改善句子之间的全局依存关系,并保留相对有益的段落级语义。此外,为了预测下一个句子,我们捕获了当前预测句子与每个下一个候选句子之间主题增强的句子对交互。通过一致的主题上下文匹配,我们促进了局部依存关系,有助于识别句子顺序的紧密语义联系。实验结果表明,TGCM从各种角度来看都优于最新模型。

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