Predicting movie revenue before committing significant investments

IF 0.4 4区 经济学 Q4 COMMUNICATION
Chiranjib Paul, P. Das
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引用次数: 0

Abstract

ABSTRACT A movie originates at the development stage when investors evaluate multiple scripts, attach key cast and crew, and shape the budget. Investors prefer to consider various scenarios before committing a large sum of money when selecting the key cast and crew. An accurate revenue prediction at this early stage reduces the risk of investment. We use a little information available at the early stage to predict movie revenue to enhance potential investors’ decision-making before greenlighting the project. In this study, we develop a movie revenue prediction model using multiple predictors, which are essentially based on key cast and crew, the storyline (movie genre), and the distinctive characteristics of the movie, which are available at the development stage. Our study applies multiple machine learning algorithms to predict movie revenue and demonstrates significant improvement over traditional statistical regression methods. The most accurate machine learning algorithm reduces the forecast error of total and opening-week box office revenue by 10.02% and 9.20%, respectively, over the benchmark multivariate linear regression method. Our results exhibit that including a movie’s distinctive characteristics reduces the average forecast error of total and opening-week box office revenue across all algorithms by 9.22% and 8.43%, respectively.
在进行重大投资前预测电影收入
摘要一部电影起源于发展阶段,投资者评估多个剧本,确定关键演员和工作人员,并制定预算。在选择关键演员和工作人员时,投资者更喜欢在投入大笔资金之前考虑各种场景。在这个早期阶段准确的收入预测可以降低投资风险。我们使用早期可用的一些信息来预测电影收入,以增强潜在投资者在项目批准前的决策能力。在这项研究中,我们使用多个预测因子开发了一个电影收入预测模型,这些预测因子基本上是基于关键演员和工作人员、故事情节(电影类型)和电影在开发阶段的独特特征。我们的研究应用了多种机器学习算法来预测电影收入,并证明了与传统统计回归方法相比的显著改进。与基准多元线性回归方法相比,最准确的机器学习算法将总票房和首映周票房收入的预测误差分别降低了10.02%和9.20%。我们的研究结果表明,包括电影的独特特征在内,所有算法的总票房和首映周票房收入的平均预测误差分别降低了9.22%和8.43%。
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来源期刊
CiteScore
0.40
自引率
0.00%
发文量
9
期刊介绍: The Journal of Media Economics publishes original research on the economics and policy of mediated communication, focusing on firms, markets, and institutions. Reflecting the increasing diversity of analytical approaches employed in economics and recognizing that policies promoting social and political objectives may have significant economic impacts on media, the Journal encourages submissions reflecting the insights of diverse disciplinary perspectives and research methodologies, both empirical and theoretical.
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