Forecasting the Success of Television Series using Machine Learning
Ramya Akula, Zachary Wieselthier, Laura Martin, Ivan Garibay

TL;DR
This study employs machine learning models to analyze and predict the success of television sitcoms based on various factors, providing a data-driven approach for industry decision-making.
Contribution
It introduces predictive models that evaluate factors influencing TV show success, offering a baseline for future forecasting and production strategies.
Findings
Character presence significantly impacts ratings.
Direction and creation also influence show success.
No single model universally predicts TV show ratings.
Abstract
Television is an ever-evolving multi billion dollar industry. The success of a television show in an increasingly technological society is a vast multi-variable formula. The art of success is not just something that happens, but is studied, replicated, and applied. Hollywood can be unpredictable regarding success, as many movies and sitcoms that are hyped up and promise to be a hit end up being box office failures and complete disappointments. In current studies, linguistic exploration is being performed on the relationship between Television series and target community of viewers. Having a decision support system that can display sound and predictable results would be needed to build confidence in the investment of a new TV series. The models presented in this study use data to study and determine what makes a sitcom successful. In this paper, we use descriptive and predictive modeling…
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