基于情感分析的网络影视剧及不同类型电影评论分析

Aishwarya, Parth Wadhwa, Prabhishek Singh
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引用次数: 4

摘要

本文提出了一种基于机器学习原理的情感分析应用。所提议的应用程序基于观众的情感提供对特定时间段的不同类型的网络连续剧和电影的比较分析。数据通过API密钥和twitter访问令牌从twitter获取。选取2017 ~ 2019年4种类型的电影和网络连续剧,对每部网络连续剧和电影进行情感分析,得出正面评价和负面评价的结果。每部电影和网络连续剧的著名标签已经确定。tweet总数为3000。每个类型的表格包含电影和网络系列的名称,相应的网络系列或电影的积极情绪百分比和相应的电影或网络系列的消极情绪百分比。对每种类型进行图形化表示,对结果进行图形化分析。综合分析是在计算了所有类型的电影和网络连续剧的正面和负面评论的平均百分比后进行的。对综合分析结果进行了图形化表示,并对最终结果进行了分析。通过提出的应用结果进行分析,得出2017-19年特定类型的电影或网络连续剧更受观众喜爱的结论。
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A New Sentiment Analysis based Application for Analyzing Reviews of Web Series and Movies of Different Genres
This research paper proposes an application of sentiment analysis that works on the principle of machine learning. The proposed application provides a comparative analysis of web series and movies of different genres of a particular time period on the basis of sentiments of the viewers. Data is fetched from twitter through API keys and twitter access tokens. The movies and web series from the year 2017 to 2019 of four different genres were taken and sentiment analysis was performed on each web series and movie, which gives result in the form of positive reviews and negative reviews. The famous hashtag for each movie and web series are determined. The total number of tweet counts is 3000. A Table of each genre was formed that contained the name of movie and web series, percentage of positive sentiments of corresponding web series or movie and percentage of negative sentiments of corresponding movie or web series. The graphical representation of each genre was done to analyze the results graphically. The combined analysis was performed after calculating the average percentage reviews of a positive and negative sentiment of all the movies and web series of each genre. The graphical representation of the combined analysis is done to analyze the final results. Through the proposed application results were analyzed concluding that whether movies or web series of a particular genre in the year 2017-19 were more liked by the viewers.
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