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Identifying Non-explicit Citing Sentences for Citation-based Summarization

机译:识别基于引用的摘要的非明确引用句

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摘要

Identifying background (context) information in scientific articles can help scholars understand major contributions in their research area more easily. In this paper, we propose a general framework based on probabilistic inference to extract such context information from scientific papers. We model the sentences in an article and their lexical similarities as a Markov Random Field tuned to detect the patterns that context data create, and employ a Belief Propagation mechanism to detect likely context sentences. We also address the problem of generating surveys of scientific papers. Our experiments show greater pyramid scores for surveys generated using such context information rather than citation sentences alone.
机译:识别科学文章中的背景(上下文)信息可以帮助学者更轻松地理解其研究领域的主要贡献。在本文中,我们提出了一种基于概率推理的通用框架,以从科学论文中提取此类上下文信息。我们对文章中的句子及其词汇相似性进行建模,以对Markov Random Field进行调整,以检测上下文数据创建的模式,并采用Belief Propagation机制来检测可能的上下文句子。我们还解决了生成科学论文调查的问题。我们的实验显示,使用此类上下文信息而不是仅使用引文句子进行的调查,金字塔得分更高。

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