基于LSTM神经网络的印度区域语言抽象文本摘要

Rishabh Karmakar, Ketki Nirantar, Prathamesh Kurunkar, Pooja Hiremath, Deptii D. Chaudhari
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引用次数: 5

摘要

文本摘要是将一大块文本编辑成简短、准确、可理解的文本的过程,它在保留原始内容的背景下,用更少的单词提供对原始文本的完整解释。地域语言的文学和文本往往难以理解,因为缺乏相应的摘要来传达文本的思想。摘要语篇文摘在英语语言中得到了广泛的研究,但在印度地区语言中还处于初级阶段。区域数据集严重缺乏,这对在该领域工作的研究人员来说是一个挑战。在本文中,我们试图解决印度地区语言(如印地语和马拉地语)的数据集稀缺性问题,并提出了两种新的深度学习架构,使用基于注意力的抽象方法和基于堆叠LSTM的序列到序列(Seq2Seq)神经网络来执行文本摘要。这些模型由我们为预处理创建的印地语和马拉地语停顿词和罕见词列表支持。我们的新方法使模型能够接受印地语和马拉地语的文本,并相应地产生简洁的摘要,能够清晰地解释原始文本的要点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indian Regional Language Abstractive Text Summarization using Attention-based LSTM Neural Network
Text summarization is a process of compiling a block of text into a short, precise, and understandable text which provides the complete interpretation of the original text in fewer words whilst retaining the context of the original content. Literature and texts in regional languages are often difficult to comprehend due to a lack of corresponding summaries conveying the idea of the text. Abstractive text summarization is widely studied for the English language, however, it is in nascent stages for Indian Regional languages. There is an acute paucity of regional data sets, a challenge for researchers working in this field. In this paper, we try to resolve the data set scarcity in Indian Regional Languages like Hindi and Marathi, and we have proposed two new deep learning architectures to perform text summarization using the Abstractive approach which is Attention-based and Stacked LSTM based Sequence To Sequence (Seq2Seq) Neural Network. These models are backed by Hindi and Marathi stop-words and rare words list that we have created for pre-processing. Our novel approach enables the model to accept text in Hindi and Marathi languages and to produce a succinct summary correspondingly able to explain the gist of the original text lucidly.
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