A Framework for Topic Evolution and Tracking Their Sentiments With Time

Rahul Pradhan, D. Sharma
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引用次数: 3

Abstract

With the ongoing covid-19 pandemic, people rely on online communication to remain connected as a precautionary measure to maintain social distancing. When we have no one on our side to listen and console us in state of fear and dilemma, we try to find comfort in anonymity of social media. Tracking real-time changes in sentiments are quite difficult as it could not correlate well with human understanding and emotions, which changes with time and many other factors. Collecting sentiments from users on search results, news articles, paintings, photographs are nowadays common. This is a more robust and effective method as traditional ways do not rely on a lot of retrospectives. In this paper, we will be analyzing the data collected from Twitter on Covid-19 and see topic modelling can be meant to detect sentiment analysis. The challenge is here we need to see results over time, and changes detect in topics and sentiments. We analyze our method over covid-19 data and farmer’s protest. Results from this experiment using the proposed methodology are promising and giving valuable insights.
一个话题演变和跟踪他们的情绪随时间变化的框架
随着covid-19大流行的持续,人们依靠在线通信保持联系,作为保持社交距离的预防措施。当我们在恐惧和困境中没有人倾听和安慰我们时,我们试图在社交媒体的匿名中找到安慰。跟踪情绪的实时变化是相当困难的,因为它不能很好地与人类的理解和情绪相关联,而人类的理解和情绪会随着时间和许多其他因素而变化。如今,收集用户对搜索结果、新闻文章、绘画和照片的看法是很常见的。这是一种更健壮和有效的方法,因为传统方法不依赖于大量的回顾。在本文中,我们将分析从推特上收集的关于Covid-19的数据,并了解主题建模可以用于检测情绪分析。这里的挑战是,我们需要看到随着时间推移的结果,以及在主题和情绪中发现的变化。我们用covid-19数据和农民抗议来分析我们的方法。使用所提出的方法的实验结果是有希望的,并提供了有价值的见解。
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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