Kannada Text Summarization using Extractive Technique

P. P, Sarvamangala D R
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引用次数: 1

Abstract

Surplus information on any topic is available in various resources including the World Wide Web, news articles, books, e-books, and blogs. A knowledge seeker might have to spend days together on assimilating the required content from the web. Moreover, most of the content available in multiple resources is repetitive. However, there is also the time constraint which plays a major part during assimilation of the content. Kannada is a regional language spoken in the southern part of India. It has various dialects based on geographic location. The amount of time involved in reading and understanding the Kannada text is user based and involves the language experience of the users. For most of them it is highly challenging and also time consuming. Instead a tool to automatically read the Kannada text content from various sources and summarize it is the need of the day. The proposed model aims to assist the readers by summarizing a given Kannada document. Automatic Kannada text summarization enables users to assimilate to required information from e resources in the shortest possible time. The project aims to build a natural language processing tool to automatically read Kannada text from any e-resource and summarize the same.
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基于抽取技术的卡纳达语文本摘要
任何主题的剩余信息都可以从各种资源中获得,包括万维网、新闻文章、书籍、电子书和博客。一个知识追求者可能需要花费几天的时间来从网上吸收所需的内容。此外,多个资源中提供的大多数内容都是重复的。然而,在内容的吸收过程中,时间的限制也起着重要的作用。卡纳达语是印度南部的一种地方语言。它根据地理位置有各种各样的方言。阅读和理解卡纳达语文本所需的时间以用户为基础,涉及用户的语言经验。对他们中的大多数人来说,这是极具挑战性和耗时的。相反,一个自动读取各种来源的卡纳达语文本内容并对其进行总结的工具是当今的需要。提出的模型旨在通过总结给定的卡纳达语文件来帮助读者。自动卡纳达语文本摘要使用户能够在最短的时间内从e资源中吸收所需的信息。该项目旨在建立一个自然语言处理工具,从任何电子资源中自动读取卡纳达语文本并进行总结。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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