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A Survey on Deep Learning based Various Methods Analysis of Text Summarization

机译:基于深度学习的各种文本摘要方法分析研究

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Due to the extremely huge amount of text available on the internet today, there is a need for a method that helps us gather concise and quality information according to our query. People expressing their views on social media, product reviews by customers, news articles, blogs, etc. are some sources from where text arises. There are two ways of summarization (SUMZ): abstractive (ABSR) and extractive (EXTR). It can be achieved using various methods like deep learning; Neural Networks (NN), fuzzy C-means clustering etc. and these methods can be either supervised or unsupervised. Moreover, SUMZ can be achieved keeping in mind the user’s emotions and views. Researchers are performing experiments on various datasets like views from social media, product reviews, news articles, or any other source online and propose various solutions to produce the best of the "gold summaries (summ.)" that are fair to the original piece of text. In this paper, we have made an attempt to study the various methods that are used for text SUMZ and observe the trends, the developments, the accomplishments and we explore new dimensions for future work to be done in this expanding field.
机译:由于当今互联网上可用的文本数量非常庞大,因此需要一种方法来帮助我们根据查询收集简洁而优质的信息。人们在社交媒体上表达自己的观点,客户对产品的评论,新闻文章,博客等是文本产生的一些来源。有两种汇总方式(SUMZ):抽象(ABSR)和提取(EXTR)。可以使用诸如深度学习之类的各种方法来实现。神经网络(NN),模糊C均值聚类等,这些方法可以是有监督的也可以是无监督的。此外,可以在牢记用户的情感和观点的情况下实现SUMZ。研究人员正在对各种数据集进行实验,例如来自社交媒体,产品评论,新闻文章或任何其他在线来源的数据视图,并提出各种解决方案以产生对原始文章最恰当的“黄金摘要”。文本。在本文中,我们尝试研究用于文本SUMZ的各种方法,并观察趋势,发展,成就,并探索新的维度,以供将来在此扩展领域中进行工作。

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