TF-IDF和对数似然法提取twitter数据关键词的比较分析

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
M. Abid, M. F. Mushtaq, Urooj Akram, Mateen Ahmed Abbasi, F. Rustam
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引用次数: 1

摘要

推特已经成为当今世界社交媒体的最高标准。每月有超过3.35亿用户上网,其中近80%的用户通过手机上网。此外,Twitter现在支持35+,这大大提高了它的使用率。它为使用不同语言的人们提供了便利。近21%的用户来自美国,79%的用户来自美国以外。一条推文被限制在140个字符以内;因此,它包含了这样的信息,更简洁,更有价值。由于它的使用,估计每天有5亿条推文被不同类别的人发送,包括老师、学生、名人、官员、音乐家等。因此,每天都有大量的数据需要分类。重要的关键特征是在海量数据中找到有助于识别twitter的关键字进行分类。为此,对从音乐领域提取的关键词选择术语频率-逆文档频率(TF-IDF)和对数似然方法,并对两种结果进行比较分析。最后,对5个用户进行相关性分析,最后我们可以在实验的基础上做出决定,假设哪种方法是最好的。这种分析很有价值,因为它给出了更准确的估计,哪种方法的结果更可靠。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative analysis of TF-IDF and loglikelihood method for keywords extraction of twitter data
Twitter has become the foremost standard of social media in today’s world. Over 335 million users are online monthly, and near about 80% are accessing it through their mobiles. Further, Twitter is now supporting 35+ which enhance its usage too much. It facilitates people having different languages. Near about 21% of the total users are from US and 79% of total users are outside of US. A tweet is restricted to a hundred and forty characters; hence it contains such information which is more concise and much valuable. Due to its usage, it is estimated that five hundred million tweets are sent per day by different categories of people including teacher, students, celebrities, officers, musician, etc. So, there is a huge amount of data that is increasing on a daily basis that need to be categorized. The important key feature is to find the keywords in the huge data that is helpful for identifying a twitter for classification. For this purpose, Term Frequency-Inverse Document Frequency (TF-IDF) and Loglikelihood methods are chosen for keywords extracted from the music field and perform a comparative analysis on both results. In the end, relevance is performed from 5 users so that finally we can take a decision to make assumption on the basis of experiments that which method is best. This analysis is much valuable because it gives a more accurate estimation which method’s results are more reliable.
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