CYMLApr 3, 2018

Predicting Gross Movie Revenue

arXiv:1804.03565v1
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of revenue prediction for movie industry stakeholders, but it appears incremental as it relies on existing data and methods without introducing new techniques.

The paper tackles the problem of predicting gross movie revenue, which is crucial for planning production and distribution in the billion-dollar film industry, by leveraging historical data and modern computing to simplify the prediction process.

'There is no terror in the bang, only is the anticipation of it' - Alfred Hitchcock. Yet there is everything in correctly anticipating the bang a movie would make in the box-office. Movies make a high profile, billion dollar industry and prediction of movie revenue can be very lucrative. Predicted revenues can be used for planning both the production and distribution stages. For example, projected gross revenue can be used to plan the remuneration of the actors and crew members as well as other parts of the budget [1]. Success or failure of a movie can depend on many factors: star-power, release date, budget, MPAA (Motion Picture Association of America) rating, plot and the highly unpredictable human reactions. The enormity of the number of exogenous variables makes manual revenue prediction process extremely difficult. However, in the era of computer and data sciences, volumes of data can be efficiently processed and modelled. Hence the tough job of predicting gross revenue of a movie can be simplified with the help of modern computing power and the historical data available as movie databases [2].

Foundations

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