Ensemble Deep Learning Model to Evaluate
Sentiments in Social media Posts
Journal:
GRENZE International Journal of Engineering and Technology
Authors:
Sapana Nikam, Nisha Wandile Kimmatkar
Volume:
10
Issue:
2
Grenze ID:
01.GIJET.10.2.578
Pages:
1365-1372
Abstract
The exponential rise in social media users makes it more difficult to comprehend
what other netizens think about a certain topic. Therefore, sentiment analysis is essential for
assessing the same through the use of cutting-edge technologies such as deep learning models,
machine learning, and natural language processing (NLP).Numerous deep learning models are
currently in use to examine the sentiments present in various social media datasets. For a
thorough examination of sentiments, natural language processing and a single neural network
are insufficiently powerful. Therefore, the suggested model uses the sentiment analysis
ensembling learning mechanism to combine the two neural networks, which ultimately serves as
a catalyst for the process of generating appropriate decisions in sentiment analysis. The
proposed design combines two neural networks—a long short term memory (LSTM) neural
network and a convolution neural network (CNN)—to train on data gathered from publicly
accessible repositories, including posts from Facebook, Instagram, and X (formerly Twitter). To
improve the sentiment analysis process utilizing deep learning models, the training data from
the ensembled model is fed into the random forest classification model.