2017年奥斯卡金像奖推文情感分析

Igor T. Correa, D. Abdala, R. Miani, E. Faria
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引用次数: 3

摘要

本文旨在对2017年奥斯卡最佳影片提名电影相关的Twitter帖子进行情感分析,以找出这些帖子与奥斯卡获奖影片之间是否存在相关性。建立tweets数据库,进行预处理,然后通过三种不同的方法进行评估:朴素贝叶斯、远程监督学习和极性函数。可以预测哪部电影会被认为是赢家,哪部电影会是不那么有名的电影。值得注意的是,推特用户更喜欢对电影发表正面评论,而不是说他们不喜欢的电影的坏话。此外,经证实,奥斯卡等颁奖典礼导致推特上的帖子数量增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis of Twitter Posts About the 2017 Academy Awards
This paper aims to perform the sentiment analysis of Twitter posts related to the movies nominated for Best Picture of the 2017 Oscars in order to find out if there is a correlation between the posts and the Oscar winners. A tweets database was built, pre-processed, and later evaluated by three distinct approaches: Naive Bayes, Distant Supervision Learning, and Polarity Function. It was possible to predict which movie would be considered the winner and which would be among the less prestigious ones. It was noted that Twitter users prefer to post positive comments about movies rather than saying bad things about the ones they did not like. Furthermore, it was verified that award shows such as the Oscars cause a growth in the number of posts on Twitter.
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