Analyzing movies to predict their commercial viability for producers
Devendra Swami, Yash Phogat, Aadiraj Batlaw, Ashwin Goyal

TL;DR
This paper develops a predictive model for film success using diverse data sources and machine learning, aiming to assist producers in estimating a movie's commercial viability before release.
Contribution
It introduces a comprehensive approach combining feature engineering, dimensionality reduction, and classification to predict film success more accurately than prior methods.
Findings
Model achieves high accuracy in predicting film success.
Incorporates diverse data sources for robust predictions.
Provides a tool for industry decision-making.
Abstract
Upon film premiere, a major form of speculation concerns the relative success of the film. This relativity is in particular regards to the film's original budget, as many a time have big-budget blockbusters been met with exceptional success as met with abject failure. So how does one predict the success of an upcoming film? In this paper, we explored a vast array of film data in an attempt to develop a model that could predict the expected return of an upcoming film. The approach to this development is as follows: First, we began with the MovieLens dataset having common movie attributes along with genome tags per each film. Genome tags give insight into what particular characteristics of the film are most salient. We then included additional features regarding film content, cast/crew, audience perception, budget, and earnings from TMDB, IMDB, and Metacritic websites. Next, we performed…
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Taxonomy
TopicsRecommender Systems and Techniques · Generative Adversarial Networks and Image Synthesis · Image and Video Quality Assessment
