Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Sentiment Analysis of IMDb Movie Reviews Using SVM and Naive Bayes Classifier

View through CrossRef
Sentiment analysis is a powerful tool for understanding public opinion, especially in the entertainment industry. Opinion in the form of text reviews plays a significant role in the success of a movie. Text-based data analysis is extensively used to recognize opinion sentiments. Achieving the proper sentiment for classification is crucial for both consumers and organizations. Handling large and complex data can pose more challenges during classification. This quantitative research is focused on classifying the sentiments of the IMDb movie review dataset using supervised Machine Learning (ML) models such as Naive Bayes (NB) and Support Vector Machines (SVM). The sentiments were classified as positive and negative to identify best-fit models for the large-scale review classification. 50,000 IMDb movie reviews went through preprocessing and feature extraction to transform unprocessed text input into numerical form, deploying Term Frequency-Inverse Document Frequency (TF-IDF). Eventually, the split between positive and negative ratings was even distributed. SVM and NB models were trained and assessed on various train-test splits to ensure robust model evaluation. Precision, Recall, and F1 Score were performance metrics applied to calculate the efficiency of models. Based on the report, the SVM model outperformed Naive Bayes regarding accuracy. SVM achieved an average accuracy of 88%, while Naive Bayes achieved 85%. This research can significantly aid filmmakers in understanding viewer preferences, which is crucial for market strategy and content creation. Keywords: IMDb Movie Review; Naive Bayes; SVM; TF-IDF
Title: Sentiment Analysis of IMDb Movie Reviews Using SVM and Naive Bayes Classifier
Description:
Sentiment analysis is a powerful tool for understanding public opinion, especially in the entertainment industry.
Opinion in the form of text reviews plays a significant role in the success of a movie.
Text-based data analysis is extensively used to recognize opinion sentiments.
Achieving the proper sentiment for classification is crucial for both consumers and organizations.
Handling large and complex data can pose more challenges during classification.
This quantitative research is focused on classifying the sentiments of the IMDb movie review dataset using supervised Machine Learning (ML) models such as Naive Bayes (NB) and Support Vector Machines (SVM).
The sentiments were classified as positive and negative to identify best-fit models for the large-scale review classification.
50,000 IMDb movie reviews went through preprocessing and feature extraction to transform unprocessed text input into numerical form, deploying Term Frequency-Inverse Document Frequency (TF-IDF).
Eventually, the split between positive and negative ratings was even distributed.
SVM and NB models were trained and assessed on various train-test splits to ensure robust model evaluation.
Precision, Recall, and F1 Score were performance metrics applied to calculate the efficiency of models.
Based on the report, the SVM model outperformed Naive Bayes regarding accuracy.
SVM achieved an average accuracy of 88%, while Naive Bayes achieved 85%.
This research can significantly aid filmmakers in understanding viewer preferences, which is crucial for market strategy and content creation.
Keywords: IMDb Movie Review; Naive Bayes; SVM; TF-IDF.

Related Results

E-Press and Oppress
E-Press and Oppress
From elephants to ABBA fans, silicon to hormone, the following discussion uses a new research method to look at printed text, motion pictures and a te...
Analisis Sentimen Layanan Pelanggan Provider Internet dengan Algoritma Support Vector Machine dan Naïve Bayes
Analisis Sentimen Layanan Pelanggan Provider Internet dengan Algoritma Support Vector Machine dan Naïve Bayes
Meningkatnya keluhan dan pujian pelanggan terhadap layanan internet menunjukkan pentingnya memahami opini publik secara menyeluruh. Jika hal ini tidak dimanfaatkan dengan baik, per...
Klasifikasi Sentimen Masyarakat terhadap Presiden Indonesia Menggunakan Metode Naive Bayes
Klasifikasi Sentimen Masyarakat terhadap Presiden Indonesia Menggunakan Metode Naive Bayes
Abstract. Social media platform X has become an important platform for expressing public opinion, particularly in the political context, including the 2024 Presidential Election in...
Hybrid Machine Learning for Sentiment Analysis of Dana Application Reviews
Hybrid Machine Learning for Sentiment Analysis of Dana Application Reviews
This research evaluates user sentiment towards the Dana application on the Google Play Store, where in early 2024 1,000 reviews were collected. Of these reviews, 72% (720 reviews) ...
Evaluation and Comparison of SVM, Deep Learning, and Naïve Bayes Performances for Natural Language Processing Text Classification Task
Evaluation and Comparison of SVM, Deep Learning, and Naïve Bayes Performances for Natural Language Processing Text Classification Task
Text classification is one of the most important task in natural language processing, In this research, we carried out several experimental research on three (3) of the most popula...
Sentiment Analysis with Python: A Hands-on Approach
Sentiment Analysis with Python: A Hands-on Approach
Sentiment Analysis is a rapidly growing field in Natural Language Processing (NLP) that aims to extract opinions, emotions, and attitudes expressed in text. It has a wide range o...
DANA User Review Sentiment Analysis with Machine Learning Algorithms
DANA User Review Sentiment Analysis with Machine Learning Algorithms
In the current digital age, digital financial platforms like DANA have gained significant popularity, playing a crucial role in simplifying transactions and financial management. U...
Multinomial Naïve Bayes Classifier: Bayesian versus Nonparametric Classifier Approach
Multinomial Naïve Bayes Classifier: Bayesian versus Nonparametric Classifier Approach
This paper proposes a Naïve Bayes Classifier for Bayesian and nonparametric methods of analyzing multinomial regression. The Naïve Bayes classifier adopted Bayes’ rule for solving ...

Back to Top