使用Bi-LSTM的抽象摘要器

P. S, Krithick Shibi. M.S, S. S., R. Kingsy Grace, M. Sri Geetha
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摘要

摘要文摘(abstract summary, AS)是从文本中提取重要信息的任务。本文提出了一种基于深度学习技术的抽象文本摘要方法。本文开发了一个模型,可以产生更精确和连贯的摘要,没有冗余问题。高效的摘要器应该以简短的方式提供输入文本的上下文。因此,摘要器的输出是抽象的信息,并作为摘要呈现给用户。CNN Daily Mail数据集经常用于多句子总结技术,而AS模型通常用于称为seq-to-seq模型的巨大深度学习技术。在总结部分,通常采用编码器-解码器模型。最常用的衡量摘要质量的指标被确定为:注册评价的召回导向替代研究(ROUGE)。建议的摘要器在ROUGE方面表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abstractive Summarizer using Bi-LSTM
Abstractive Summarization (AS) of texts is the task of abstracting crucial information from the source. This paper presents an approach for text summarization in abstractive form with deep learning techniques. This paper develops a model that produces more precise and coherent summaries without redundancy problems. An efficient summarizer should provide the context from the input text in a brief manner. Thus, the output of the summarizer is abstracted information and is presented as a summary to the user. The dataset CNN Daily Mail is often used for multi -sentence summarizing techniques, and the AS models are usually used under an immense deep learning technique termed as seq-to-seq model. In the summarization part, the encoder-decoder model is typically applied. The most often used metric for evaluating the quality of summarization is identified: Recall - Oriented Understudy for Gisting Evaluation (ROUGE). The proposed summarizer performs better in terms of ROUGE.
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