基于面向方面的影视剧情感分析

T. Cooray, Geethika Perera, Dinushka Chandrasena, Jesuthasan Alosius, Archchana Kugathasan
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引用次数: 0

摘要

基于方面的情感分析(ABSA)在不同领域用于分析客户评论,以预测客户对某些产品的总体意见。随着互联网的扩大,人们提供了一个廉价和节省时间的方法来表达自己的意见,更大的受众,而各个行业都有机会收集免费的信息,从中获得市场价值。将机器学习方法用于电影和电视剧相关方面的评估尚未开始,这可能是该行业的新发展。本研究的重点是对电影或电视连续剧进行基于类型,故事以及演员和工作人员方面的ABSA。通过网络抓取从社交媒体收集的数据进行处理,得出充分的结果,从而大致了解电影或电视剧的受欢迎程度与上述各方面的关系。然后,对每个方面进行进一步分析,以收集属于每个方面的精确信息。该系统的结果准确率达到79%以上。结果表明,该方案比以往的方案更加成功,具有较高的商业价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aspect Based Sentiment Analysis for Evaluating Movies and TV series
Aspect-based sentiment analysis (ABSA) is used in different fields for analyzing customer reviews to project an overall customer opinion on certain products. With the expansion of the internet, people are provided with an inexpensive and time-saving method to express their opinion to a larger audience, while various industries are handed with the opportunity to gather free information from it to obtain market value. The implementation of machine learning methods for the evaluation of aspects related to movies and television series has not been commenced, and it could be a new development for the industry. This study focuses on conducting an ABSA on a movie or a television series based on genre, story as well as cast and crew aspects. The data collected from social media through web scraping is processed to produce adequate results to get a broad understanding on how the popularity of the movie or the television series related to above mentioned aspects. Then, each aspect is further analyzed to gather precise information belonging to each aspect. The accuracy of the results of the proposed system has been achieved over 79%. The results proved that the solution is highly successful than the former works with high business value.
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