Finding Nemo: Predicting Movie Performances by Machine Learning Methods

Author:

Kim Jong-MinORCID,Xia Leixin,Kim Iksuk,Lee Seungjoo,Lee Keon-Hyung

Abstract

Analyzing the success of movies has always been a popular research topic in the film industry. Artificial intelligence and machine learning methods in the movie industry have been applied to modeling the financial success of the movie industry. The new contribution of this research combined Bayesian variable selection and machine learning methods for forecasting the return on investment (ROI). We also attempt to compare machine learning methods including the quantile regression model with movie performance data in terms of in-sample and out of sample forecasting.

Publisher

MDPI AG

Reference27 articles.

1. Forecasting Box Office Performances Using Machine Learning Algorithms;Çağlıyor,2019

2. Quantile Regression

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1. Analysis of the Technology Acceptance Model for Artificial Intelligence Applications in the Film Industry;2023 6th International Seminar on Research of Information Technology and Intelligent Systems (ISRITI);2023-12-11

2. Examining Factors That Affect Movie Gross Using Gaussian Copula Marginal Regression;Forecasting;2022-07-21

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