文本摘要:一项必要的研究

Prabhudas Janjanam, CH Pradeep Reddy
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引用次数: 10

摘要

来自不同来源的数据的激增使得人类在某些情况下不能充分利用这些知识。为了快速地对丰富的信息进行概述,文本摘要(TS)就发挥了作用。TS将有效地从源中提取候选句子,并表示整个知识的显著性。在过去的几十年里,文本摘要技术已经被语言学的使用转化为先进的机器学习模型,本研究探索了摘要方法以及它们在单文档和多文档摘要中的最新技术模型。该调查旨在使用机器学习、最近图和基于进化的方法,从特征表示到句子选择和摘要生成进行广泛的研究。全面的研究将有助于研究人员在构建有效的自然语言处理应用程序中有效地处理大量数据。最终,本研究得出了流行的抽象机制和观察结果,这将有助于预期的研究。
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Text Summarization: An Essential Study
The proliferation of data from diverse sources makes humans insufficient in utilizing the knowledge properly at some instance. To quickly have an overview of abundant information, Text Summarization (TS) comes into play. TS will effectively extract the candidate sentences from the source and represent the saliency of whole knowledge. Over the decades Text Summarization techniques have been transformed by the usage of linguistics to advanced machine learning models, this study explores summarization approaches along with their recent state-of-art models in single and multi-document summarization. This survey is intended to make an extensive study from features representation to sentence selection and summary generation using machine learning, recent graph and evolutionary based methods. The overall investigation will help the researchers to effectively handle large quantities of data in building effective Natural Language Processing applications. Eventually, this study draws popular abstractive mechanisms and observations that would be helpful for the intended research.
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