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Autori principali: Udandarao, Vikranth, Gupta, Pratyush
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.11651
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author Udandarao, Vikranth
Gupta, Pratyush
author_facet Udandarao, Vikranth
Gupta, Pratyush
contents In the contemporary film industry, accurately predicting a movie's earnings is paramount for maximizing profitability. This project aims to develop a machine learning model for predicting movie earnings based on input features like the movie name, the MPAA rating of the movie, the genre of the movie, the year of release of the movie, the IMDb Rating, the votes by the watchers, the director, the writer and the leading cast, the country of production of the movie, the budget of the movie, the production company and the runtime of the movie. Through a structured methodology involving data collection, preprocessing, analysis, model selection, evaluation, and improvement, a robust predictive model is constructed. Linear Regression, Decision Trees, Random Forest Regression, Bagging, XGBoosting and Gradient Boosting have been trained and tested. Model improvement strategies include hyperparameter tuning and cross-validation. The resulting model offers promising accuracy and generalization, facilitating informed decision-making in the film industry to maximize profits.
format Preprint
id arxiv_https___arxiv_org_abs_2405_11651
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Movie Revenue Prediction using Machine Learning Models
Udandarao, Vikranth
Gupta, Pratyush
Machine Learning
In the contemporary film industry, accurately predicting a movie's earnings is paramount for maximizing profitability. This project aims to develop a machine learning model for predicting movie earnings based on input features like the movie name, the MPAA rating of the movie, the genre of the movie, the year of release of the movie, the IMDb Rating, the votes by the watchers, the director, the writer and the leading cast, the country of production of the movie, the budget of the movie, the production company and the runtime of the movie. Through a structured methodology involving data collection, preprocessing, analysis, model selection, evaluation, and improvement, a robust predictive model is constructed. Linear Regression, Decision Trees, Random Forest Regression, Bagging, XGBoosting and Gradient Boosting have been trained and tested. Model improvement strategies include hyperparameter tuning and cross-validation. The resulting model offers promising accuracy and generalization, facilitating informed decision-making in the film industry to maximize profits.
title Movie Revenue Prediction using Machine Learning Models
topic Machine Learning
url https://arxiv.org/abs/2405.11651