Forecasting Box-Office Receipts of Motion Pictures Using Neural Networks
نویسندگان
چکیده
Forecasting box-office receipts of a particular motion picture has intrigued many scholars and industry leaders as a difficult and challenging problem. In this study, we explore the use of neural networks in forecasting the financial performance of a movie at the boxoffice before its theatrical release. In our model, we convert the forecasting problem into a classification problem—rather than forecasting the point estimate of box-office receipts, we classify a movie based on its box-office receipts in one of nine categories, ranging from a “flop” to a “blockbuster.” Because our model is designed to predict the financial success of a movie before its theatrical release, it can be used as a powerful decision aid by studios, distributors, and exhibitors. We present our exciting prediction results using three different performance measures: average percent success rate, improvement over random sampling, and similarity to perfect classification. Using sensitivity analysis we also present an evaluation of the decision variables and their impact on the box-office success.
منابع مشابه
Predicting box-office success of motion pictures with neural networks
Predicting box-office receipts of a particular motion picture has intrigued many scholars and industry leaders as a difficult and challenging problem. In this study, the use of neural networks in predicting the financial performance of a movie at the box-office before its theatrical release is explored. In our model, the forecasting problem is converted into a classification problem-rather than...
متن کاملPredicting the Financial Success of Hollywood Movies Using an Information Fusion Approach
Hollywood has often been called the land of hunches and wild guesses. The uncertainty associated with the predictability of product demand makes the movie business a risky endeavor. Therefore, predicting the box-office receipts of a particular motion picture has intrigued many scholars and industry leaders as a difficult and challenging problem. In this study, with a rather large and feature ri...
متن کاملUsing Neural Networks to Forecast Box Office Success
Predicting box office receipts of a particular movie has intrigued many researchers, domain experts and industry leaders as a challenging problem. In this paper, we report on the current status of a prediction system being built at the Institute for Research in Information Systems (IRIS) at Oklahoma State University since 1998. In our model, the forecasting problem is converted into a classific...
متن کاملBox Office Forecasting considering Competitive Environment and Word-of-Mouth in Social Networks: A Case Study of Korean Film Market
Accurate box office forecasting models are developed by considering competition and word-of-mouth (WOM) effects in addition to screening-related information. Nationality, genre, ratings, and distributors of motion pictures running concurrently with the target motion picture are used to describe the competition, whereas the numbers of informative, positive, and negative mentions posted on social...
متن کاملForecast Model for Box-office Revenue of Motion Pictures
The main objective of the paper is to develop an econometric model to forecast box-office revenue of motion pictures. Considering the importance demand for new products, marketing researches have developed various demand forecasting models. However, these models forecast future demands based on either several months of initial sales data after new product introduction or the survey data on cust...
متن کامل