An Ensemble Machine Learning Approach for Twitter Sentiment Analysis
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Authors
Радюк, Павло Михайлович
Radiuk, Pavlo M.
Pavlova, Olga
Hrypynska, Nadiia
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Abstract
The presented study addresses the issue of classifying emotional expressions based on
small texts (tweets) extracted from the social network Twitter. In this paper, we propose a
novel approach to preprocessing tweets to fit them more effectively into the classification
model. Moreover, we suggest utilizing two types of features, namely unigrams and
bigrams, to expand the feature vector. The classification task of emotional expressions was
performed according to several machine learning algorithms: raw random forest, gradient
boosting random forest, support vector machine, multilayer perceptron, recurrent neural
network, and convolutional neural network. The feature vector elements are presented as
sparse and dense subvectors. As a result of computational experiments, it was found that
the “appearance” in the reflection of the sparse vector provided higher performance than
the “regularity.” The experiments also showed that deep learning approaches performed
better than traditional machine learning techniques. Consequently, the best recurrent
neural network achieved an accuracy of 83.0% on the test dataset, while the best
convolutional neural network reached 83.34%. At the same time, it was discovered that
the convolutional model with the support vector machine classifier showed better
performance than the single convolutional neural network. Overall, the proposed ensemble
method based on receiving the most votes according to the five best models’ predictions
has reached an absolute accuracy of 85.71%, proving its practical usefulness.
Description
Radiuk P. An Ensemble Machine Learning Approach for Twitter Sentiment Analysis / P. Radiuk, O. Pavlova, N. Hrypynska // The 6th International Conference on Computational Linguistics and Intelligent Systems (CoLInS-2022). Volume I: Main Conference : CEUR-Workshop Proceedings. – Vol. 3171. – (Gliwice, Poland, 12-13 May 2022). Gliwice. – 2022. – P. 387-397.
Citation
Radiuk P. An Ensemble Machine Learning Approach for Twitter Sentiment Analysis / P. Radiuk, O. Pavlova, N. Hrypynska // The 6th International Conference on Computational Linguistics and Intelligent Systems (CoLInS-2022). Volume I: Main Conference : CEUR-Workshop Proceedings. – Vol. 3171. – (Gliwice, Poland, 12-13 May 2022). Gliwice. – 2022. – P. 387-397.