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Applying Machine Learning to Predict Film Daily Audience Data: System and Dataset

机译:应用机器学习预测电影每日观众数据:系统和数据集

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Audience data is highly correlated with the levels of film viewership, as they can impact on people’s perceptions of films, resulting in whether or not they would watch a film or even recommend to others. Hence, if audience data can be properly analyzed, they can provide important clue to help predicting the trend of daily film statistics, such as box office, attendance rate, etc., which would further help cinemas to make wise marketing decisions. Motivated by this, we propose a novel audience data prediction system based on the recent advance of deep learning. Our approach begins with applying Fourier Transform-based algorithm to encode multi-channel time-series audience data into a set of feature maps. Then, these feature maps are fed to Generative Adversarial Networks (GANs) to predict and generate future audience data. To evaluate the proposed approach, we collected a dataset consisting of 200 films across three years (2017, 2018 and 2019), where 15 different daily attributes of 30 days are provided for each film. To help potential research of other researchers, we made it available online. The experiment results illustrated the superior performance of our algorithm in comparison to the baseline.
机译:观众数据与电影型层的水平高度相关,因为它们会影响人们对电影的看法,从而导致他们是否会观察电影或甚至推荐给其他电影。因此,如果可以妥善分析观众数据,他们可以提供重要的线索,以帮助预测日常电影统计数据的趋势,例如票房,出勤率等,这将进一步帮助电影院来制作明智的营销决策。基于这一目标,我们提出了一种基于深度学习进步的新型观众数据预测系统。我们的方法始于将傅立叶变换的算法应用于将多通道时间序列受众数据编码为一组特征映射。然后,这些特征映射被馈送到生成的对抗性网络(GAN)以预测和生成未来的受众数据。为了评估拟议的方法,我们收集了一个由200部电影组成的数据集(2017,2018和2019),其中15个不同的每日属性为每部电影提供30天。为了帮助对其他研究人员的潜在研究,我们在线提供。实验结果说明了与基线相比的算法的优越性。

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