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Bayesian Belief Network For Box-office Performance: A Case Studyrnon Korean Movies

机译:贝叶斯信念网络的票房表现:以韩国电影为例

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摘要

Due to their definition as experience goods with short product lifetime cycles, it is difficult to forecast the demand for motion pictures. Nevertheless, producers and distributors of new movies need to forecast box-office results in an attempt to reduce the uncertainty in the motion picture business. Previous research demonstrated the ability of certain movie attributes such as early box-office data and release season to forecast box-office revenues. However, no previous research has focused on the causal relationship among various movie attributes, which have the potential to increase the accuracy of box-office predictions. In this paper a Bayesian belief network (BBN), which is known as a causal belief network, is constructed to investigate the causal relationship among various movie attributes in the performance prediction of box-office success. Subsequently, sensitivity analysis is conducted to determine those attributes most critically related to box-office performance. Finally, the probability of a movie's box-office success is computed using the BBN model based on the domain knowledge from the value chain of theoretical motion pictures. The results confirm the improved forecasting accuracy of the BBN model compared to artificial neural network and decision tree.
机译:由于它们被定义为具有较短产品生命周期的体验产品,因此很难预测对电影的需求。尽管如此,新电影的制片人和发行人需要预测票房收入,以减少电影业务的不确定性。先前的研究表明,某些电影属性(如早期票房数据和发行季节)可以预测票房收入。但是,以前没有研究集中在各种电影属性之间的因果关系上,它们之间有可能提高票房预测的准确性。本文建立了一种被称为因果信念网络的贝叶斯信念网络(BBN),以研究票房成功的性能预测中各种电影属性之间的因果关系。随后,进行敏感性分析以确定与票房表现最关键相关的那些属性。最后,基于理论电影图片价值链中的领域知识,使用BBN模型计算电影票房成功的可能性。结果证实,与人工神经网络和决策树相比,BBN模型的预测准确性有所提高。

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