单文档短文本的自动主题建模

Anamta Sajid, S. Jan, I. Shah
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引用次数: 8

摘要

本文提出了一种从单文档短文本中自动提取主题和主标题的方法。该方法采用在线文本挖掘和自然语言处理技术。任何文本的标题都提供了一种有效的方式,通过只看其主要标题来简洁地掌握文本内容的概述,这比阅读摘要要快得多。本文提出、实施并比较了三种不同的机制,以找到与文本中解释的整体事件更相关的主题自动提取的最佳方法。该系统将根据《纽约时报》的15篇新闻文章进行评估。本文的意义在于:首先,这些自动主题提取技术可以进一步用于文档分类、文档相关性和相似性、摘要、对任何事件的全面把握以及通过扫描标题在超大和分散的文本数据中发现新颖性。其次,通过对各种数据挖掘技术的详细分析,它可以作为新的研究人员的路线图。实验结果表明,这些名词是更相关、更可靠、更适合寻找文本主题的词。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Topic Modeling for Single Document Short Texts
This paper presents a novel approach to automate the process of extracting topic and main title from a single-document short text. The proposed approach uses online text mining and Natural Language Processing techniques. The title of any text provides an efficient way to concisely grasp the overview of the contents in the text by giving a glance on its main heading only, which is quicker than reading the summary. In this paper, three different mechanisms have been proposed, implemented and compared to find the best approach for automatic extraction of a topic that is more relevant to the overall event explained in the text. The proposed system is evaluated against fifteen news articles from New York Times. The significance of the paper is twofold: Firstly, these automatic topic extraction techniques can be used further for document classification, document relevancy and similarity, summarization, comprehensive grasp of any event and finding novelty in out sized and scattered text data by scanning titles. Secondly, it can be used as a road map for the new researchers by using this detailed analysis of various data mining techniques. The experimental results show that the Nouns are more related, reliable, and suitable words for finding the topic of the text.
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