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Predicting movie box-office revenues using deep neural networks

机译:使用深神经网络预测电影箱 - 办公室收入

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摘要

In the film industry, the ability to predict a movie's box-office revenues before its theatrical release can decrease its financial risk. However, accurate predictions are not easily obtained. The complex relationship between movie-related data and movie box-office revenues, plus the increasing volume of data in online movie databases, pose challenges for their effective analysis. In this paper, a multimodal deep neural network, incorporating input about movie poster features learned in a data-driven fashion, is proposed for movie box-office revenues prediction. A convolutional neural network (CNN) is built to extract features from movie posters. By pre-training the CNN, features that are relevant to movie box-office revenues can be learned. To evaluate the performance of the proposed multimodal deep neural network, comparative studies with other prediction techniques were carried out on an Internet Movie Database dataset, and visualization of movie poster features was also performed. Experimental results demonstrate the superiority of the proposed multimodal deep neural network for movie box-office revenues prediction.
机译:在电影行业中,能够在其戏剧释放之前预测电影的票房收入可以降低其财务风险。但是,不容易获得准确的预测。电影相关数据与电影箱办公室收入之间的复杂关系,以及在线电影数据库中增加的数据量,对其有效分析构成挑战。本文提出了一种多模式深度神经网络,包括以数据驱动方式学习的电影海报特征的输入,用于电影箱办公室收入预测。建立卷积神经网络(CNN)以提取电影海报的特征。通过预先培训CNN,可以学习与电影盒办公室收入相关的功能。为了评估所提出的多模式深神经网络的性能,对其他预测技术的比较研究在互联网电影数据库数据集上进行,并且还执行了电影海报特征的可视化。实验结果表明,电影箱办公室收入预测的提议多峰神经网络的优势。

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