The film industry is one of the most popular entertainment industries and one of the biggest markets for business. Among the contributing factors to this would be the success of a movie in terms of its popularity as well as its box office performance. Hence, we create a comprehensive comparison between the various machine learning models to predict the rate of success of a movie. The effectiveness of these models along with their statistical significance is studied to conclude which of these models is the best predictor. Some insights regarding factors that affect the success of the movies are also found. The models studied include some Regression models, Machine Learning models, a Time Series model and a Neural Network with the Neural Network being the best performing model with an accuracy of about 86%. Additionally, as part of the testing data for the movies released in 2020 are analysed.
翻译:电影业是最受欢迎的娱乐行业之一,也是最大的商业市场之一,其成因包括电影的流行程度和盒式办公室性能。因此,我们对各种机器学习模型进行全面比较,以预测电影的成功率。这些模型的功效及其统计意义研究以得出哪些模型是最佳预测者。还发现了一些影响电影成功的因素的见解。所研究的模型包括一些倒退模型、机器学习模型、时间序列模型和神经网络(神经网络)是最佳表现模型,精确度约为86%。此外,作为2020年发布的电影测试数据的一部分,还分析了2020年发布的电影测试数据。