Keywords Generator From Paragraph Text Using Text Mining in Bahasa Indonesia

Berlian Rahmy Lidiawaty, Muhammad Estu Zulfaqor, Okcelen Diyantara, Dian Retiana Shinta Dewi
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引用次数: 1

Abstract

When reading a document text such as news or article, people tend to read related information topic. However, when they try to use search engine for looking into it, they don't have any idea what the keywords are. Copying the whole text to the search engine's bar is not the best solution, since it will increase the searching process time but make the search engine nonoptimal. It also makes people get unrelated topic. Therefore, this research has a purpose to make an application that generates keyword from inputted text of paragraph. Despite of input the whole paragraph or text in the search bar, user can input the text in the developed application and get the best keyword based on the text. The main method that has been used in this research is a text mining. First, we perform a pre-processing which are turn the inputted text to be in lower case. The second, we remove the stop words and some characters from text. The third, we perform a tokenizing method to separate each word and store it in an array. The main step is calculating the score of each word that has been stored in array. The result of this research is three words that generated by the system from inputted paragraph text. The keywords that generated by system are the same with the method's calculation. However, this application system needs to improve more to get a better performance.
基于文本挖掘的印尼语段落文本生成器
在阅读新闻或文章等文档文本时,人们倾向于阅读相关的信息主题。然而,当他们试图使用搜索引擎查看时,他们不知道关键字是什么。将整个文本复制到搜索引擎的栏不是最好的解决方案,因为它会增加搜索过程的时间,但使搜索引擎不是最优的。它也使人们得到不相关的话题。因此,本研究的目的是制作一个从输入的段落文本中生成关键字的应用程序。用户无需在搜索栏中输入整段或整段文本,也可以在开发的应用程序中输入文本,并根据文本获得最佳关键字。本研究采用的主要方法是文本挖掘。首先,我们执行预处理,将输入的文本变为小写。第二,我们从文本中删除停止词和一些字符。第三,我们执行标记方法来分离每个单词并将其存储在数组中。主要步骤是计算存储在数组中的每个单词的分数。本研究的结果是系统从输入的段落文本中生成三个单词。系统生成的关键字与该方法的计算结果一致。但是,为了获得更好的性能,该应用系统还需要进行更多的改进。
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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