Movie Success Prediction Based on Feature and Trailer Comments Using Ensemble+LSTM Model

  • Nadya Sikana Master of Information Technology, Informatics Faculty, Mikroskil University, Indonesia
  • Ronsen Purba Master of Information Technology, Informatics Faculty, Mikroskil University, Indonesia
Keywords: Ensemble Method, Movie Success Prediction, Sentiment Analysis

Abstract

Predicting the success of a movie is a very important aspect due to the high risks involved in movie production. The challenge lies in the uncertainty within the movie industry and selecting the appropriate machine learning model. We can combine movie features and sentiment analysis from social media using machine learning techniques to achieve movie success prediction. The methods used for predicting based on movie features are Ensemble models (Random Forest + Gradient Boosting). Meanwhile, the methods used for sentiment analysis of trailer comments is LSTM. The evaluation of the models used is based on RMSE and accuracy calculation. The final prediction of success obtains an RMSE of 0,8807 and an accuracy of 91,19%. This represents an improvement from previous research. Further research is recommended to implement the model in the movie industry

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Published
2024-10-01
How to Cite
Nadya Sikana, & Purba, R. (2024). Movie Success Prediction Based on Feature and Trailer Comments Using Ensemble+LSTM Model . Journal La Multiapp, 5(5), 595-608. https://doi.org/10.37899/journallamultiapp.v5i5.1417