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Unsupervised Abstractive Meeting Summarization with Multi-Sentence Compression and Budgeted Submodular Maximization

机译:无监督的抽象会议总结,多句子压缩和预算潜水区最大化

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We introduce a novel graph-based framework for abstractive meeting speech summarization that is fully unsupervised and does not rely on any annotations. Our work combines the strengths of multiple recent approaches while addressing their weaknesses. Moreover, we leverage recent advances in word embeddings and graph degeneracy applied to NLP to take exterior semantic knowledge into account, and to design custom diversity and informative-ness measures. Experiments on the AMI and ICSI corpus show that our system improves on the state-of-the-art. Code and data are publicly available, and our system can be interactively tested.
机译:我们介绍了一种基于格式的基于图表的框架,用于抽象会议语音摘要,这是完全无人监督的,并且不依赖于任何注释。我们的作品结合了多个最近方法的优势,同时解决了他们的弱点。此外,我们利用Word Embeddings和Graph Regeneracy的最近进步应用于NLP,以考虑到外部语义知识,并设计定制多样性和信息性的措施。 AMI和ICSI语料库的实验表明,我们的系统改善了最先进的。代码和数据是公开可用的,我们的系统可以进行交互式测试。

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