利用机器学习和进化计算对电影成功的早期预测

Firas Gerges, D. Azar, J. Vybihal, J. T. Wang
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引用次数: 1

摘要

电影是娱乐领域的主要产业之一,也是全球经济的重要贡献者。电影制作过程通常需要数百万美元的投资。在电影制作之前预测其成功率将避免巨大的经济损失。文献中存在各种方法来解决预测电影成功的问题。然而,这些方法中的大多数都无法创建一个有效的模型来帮助投资者和利益相关者参与决策过程。这些方法依赖于制作后或发行后的信息,因此不适合用于投资前的预测。现有的生产前预测方法总体上表现出较低的预测性能。由于决策树算法的白盒性质,从业者会对在制作电影时利用树状结构作为决策系统感兴趣。在这项工作中,我们提出了一种基于遗传算法(GA)的进化方法,用于优化决策树算法(C5)的输出,该算法用于在制作早期阶段预测电影的成功。实验表明,我们的混合方法结合了机器学习和进化计算,大大超过了目前最先进的机器学习技术,实现了90.5%的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Prediction of Movie Success Using Machine Learning and Evolutionary Computation
The motion picture is one of the major industries in the entertainment domain and a key contributor to the world-wide economy. Millions of dollars are often required and invested in the movie production process. Predicting the rate of success of a movie before its production will avoid huge financial losses. Various approaches exist in the literature to tackle the problem of forecasting movie success. However, most of these approaches fall short in creating an efficient model that could help investors and stakeholders in the decision-making process. These approaches rely on post-production or post-release information, making them inappropriate for pre-investment prediction. Existing approaches that tackle the pre-production forecasting show low predictive performance in general. Due to the white-box nature of decision tree algorithms, practitioners would be interested in leveraging the tree-like structure as a decision-making system while producing a movie. In this work, we propose an evolutionary approach, based on Genetic Algorithms (GA), for optimizing the outputs of the decision tree algorithm (C5) used for the prediction of movie success during the early stage of production. Experiments demonstrate that our hybrid method combining machine learning and evolutionary computation significantly surpasses current state-of-the-art machine learning techniques, achieving a prediction accuracy of 90.5%.
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