Prediction of IMDB Movie Score & Movie Success By Using The Facebook

I. Sindhu, Faryal Shamsi
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引用次数: 1

Abstract

Movie industry is considered a high risk cultural industry. Prediction of the movie success before the release of a movie is of critical importance. Prior studies have been conducted to predict the movie success on the basis of sentiment analysis of movie reviews, IMDB score, tweets etc. However, this study implies the exploration of relationship b/w the Facebook features on the movie success and IMDB score. Two data sets were used for this study. Sentiment analysis of Facebook movie page was done through lexalytics to calculate the hype factor of that movie. A predictive model is developed that exploits Facebook features to predict movie success and IMDB score. Linear regression (LM) revealed that Facebook features are not solely important in the prediction of IMDB score and SVM shows the 84% accuracy in the prediction of movie success in terms of Hit and Flop; hence conclusion drawn is that the sentiment score of Facebook page will improve the accuracy of a prediction model for movie success.
利用Facebook预测IMDB电影评分和电影成功
电影产业被认为是高风险的文化产业。在电影上映之前预测电影的成功是至关重要的。之前的研究是基于电影评论、IMDB评分、推文等的情感分析来预测电影的成功。然而,这项研究暗示了Facebook特征对电影成功和IMDB评分之间关系的探索。本研究使用了两个数据集。通过词汇分析对Facebook电影页面进行情感分析,计算该电影的炒作系数。开发了一个预测模型,利用Facebook的功能来预测电影的成功和IMDB评分。线性回归(LM)显示,在预测IMDB评分方面,Facebook功能并不仅仅是重要的,支持向量机在预测电影成功方面的准确率为84%;因此得出的结论是,Facebook页面的情感得分将提高电影成功预测模型的准确性。
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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