基于MF-DCCA和多元神经网络方法的周末票房预测

L. Gu, Xinxin Zhang, Ke Li, Guozhu Jia
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引用次数: 0

摘要

票房收入的预测一直是一个困难而富有挑战性的问题。本文提出了一种基于多重分形趋势互相关分析(MF-DCCA)和多重神经网络(DNN、CNN、LSTM)的周末票房预测方法。MF-DCCA定量发现各因素与票房收入之间存在长期的相互关系,呈多重分形。它的滚动窗口可以反映神经网络的内在机制,并从原始数据中提取有效数据,提高模型的泛化能力。这些框架的预测性能能够达到或超过基于单个神经网络的方法。(MF-DCCA)-DNN的分类准确率为0.843,(MF-DCCA)-CNN的分类准确率为0.786,(MF-DCCA)-LSTM的分类准确率为0.986。本研究为进一步丰富和提高票房收入预测和有效特征提取的准确性提供了理论方法。
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Weekend Box Office Forecasting Based on MF-DCCA and Multiple Neural Networks Approach
The forecasting of box office receipts is always a difficult and challenging problem. In this paper, a forecasting approach is proposed to accurately forecasting weekend box office receipts based on multifractal detrend cross-correlation analysis (MF-DCCA) and multiple neural networks (DNN, CNN, LSTM). The MF-DCCA quantitatively finds that there is a long-range cross-correlation between each factor and box office receipts, which is multifractal. Its rolling window can reflect the intrinsic mechanism of neural network, and extract effective data that can improve the generalization ability of the model from the original data. The predictive performance of these frameworks is able to meet or exceed the method based on a single neural network. For (MF-DCCA)-DNN, the classification accuracy is 0.843, (MF-DCCA)-CNN is 0.786, and (MF-DCCA)-LSTM is 0.986. This research provides a theoretical method to further to enrich and improve the accuracy of box office receipts prediction and the extraction of effective feature.
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