ANALYSIS OF PUBLIC REACTION TO E-LEARNING ON TWITTER

Knaan A.-R., Polshchikov K.A.
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Abstract

Over the past few decades, due to the explosive growth of social media, online resources, and microblogging sites such as Twitter. There was an influx of user-generated content. The data obtained from these resources is a rich source of information for data mining. Sentiment analysis is a current and important area of research that attempts to determine the polarity of a text. The definition of feelings about current events in the world has become crucial. This article focuses on data mining on Twitter and defining opinions regarding e-learning. The focus is on identifying sentiment from e-learning-related texts that are shared on Twitter. About 3,000 tweets were extracted and the polarity of those tweets was detected, and then visualize the resulting data.
公众对twitter上电子学习的反应分析
在过去的几十年里,由于社交媒体、在线资源以及Twitter等微博网站的爆炸式增长。用户生成的内容大量涌入。从这些资源中获得的数据是数据挖掘的丰富信息源。情感分析是当前一个重要的研究领域,它试图确定文本的极性。对世界时事感受的定义已经变得至关重要。本文主要关注Twitter上的数据挖掘和定义关于电子学习的观点。重点是从Twitter上分享的电子学习相关文本中识别情感。他们提取了大约3000条推文,并检测了这些推文的极性,然后将结果数据可视化。
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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