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Abstractive text summarization based on deep learning and semantic content generalization

机译:基于深度学习和语义内容泛化的抽象文本摘要

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摘要

This work proposes a novel framework for enhancing abstractive text summarization based on the combination of deep learning techniques along with semantic data transformations. Initially, a theoretical model for semantic-based text generalization is introduced and used in conjunction with a deep encoder-decoder architecture in order to produce a summary in generalized form. Subsequently, a methodology is proposed which transforms the aforementioned generalized summary into human-readable form, retaining at the same time important informational aspects of the original text and addressing the problem of out-of-vocabulary or rare words. The overall approach is evaluated on two popular datasets with encouraging results.
机译:这项工作提出了一种新的框架,用于基于深度学习技术的组合以及语义数据转换来提高抽象文本摘要。最初,引入了基于语义的文本概括的理论模型,并与深度编码器解码器架构结合使用,以便以普遍形式产生摘要。随后,提出了一种方法,其将上述通用概要转化为人类可读形式,同时保持原始文本的重要信息方面,并解决失败的问题或罕见的词语。整体方法在两个流行的数据集中评估了令人鼓舞的结果。

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