2019 IEEE International Conference on Intelligent Techniques in Control, Optimization and Signal Processing (INCOS) 2019
DOI: 10.1109/incos45849.2019.8951367
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Sentiment Analysis of Social Media Network Using Random Forest Algorithm

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Cited by 76 publications
(25 citation statements)
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“…Traditional machine learning techniques, like Naive Bayes (Mubarok et al 2017; Anand and Naorem 2016), Decision Trees/Random Forest (Fitri et al 2019;Karthika et al 2019) and SVM (Pannala et al 2016;Wilson et al 2005;Tripathy et al 2016) have been widely used in the past. Esuli et al (2020) proposes an approach for cross-lingual sentiment quantification based on Structural Correspondence Learning (SCL) which is a technique that can be applied to different kinds of classifiers to transfer knowledge through a mapping between pivot terms of two feature spaces.…”
Section: Machine Learningmentioning
confidence: 99%
“…Traditional machine learning techniques, like Naive Bayes (Mubarok et al 2017; Anand and Naorem 2016), Decision Trees/Random Forest (Fitri et al 2019;Karthika et al 2019) and SVM (Pannala et al 2016;Wilson et al 2005;Tripathy et al 2016) have been widely used in the past. Esuli et al (2020) proposes an approach for cross-lingual sentiment quantification based on Structural Correspondence Learning (SCL) which is a technique that can be applied to different kinds of classifiers to transfer knowledge through a mapping between pivot terms of two feature spaces.…”
Section: Machine Learningmentioning
confidence: 99%
“…The results for the word education were mostly positive. Karthika et al [18] evaluated different models and the experiments were conducted to find the best classifier to analyze the reviews from shopping site amazon. Based on those reviews the product is classified as positive, negative, or neutral.…”
Section: Related Workmentioning
confidence: 99%
“…The sentiment analysis method [11] first performed the steps of data preprocessing including removal of stop words, punctuation marks, alpha-numeric character, HTML-tags, de-duplication, stemming and lemmatization; then text feature extraction using Term Frequency/Inverse Document Frequency (TF/IDF); then data splitting into training and testing; and finally the classification using KNN, LR and SVM with 5-fold cross validation.Next method [12] collected the data; computed the co-variance and correlation on it; selected the dependent and independent variables; pre-processed the data; applied the linear transformation, standardization, normalization and data mining; extracted the features; and finally classified them along with the detection of fake reviews.Another method [13] also began with the collection of online product reviews using web scraping, then it pre-processed it, extracted the features, and classified them.It replaced the output layer of the Convolution Neural Networks (CNN) by SVM.The method followed the steps Copyright © 2021 MECS I.J. Engineering and Manufacturing, 2021, 2, 40-52 of data collection, pre-processing, feature selection, detection process, and sentiment classification with K-fold cross validation [14].…”
Section: Related Workmentioning
confidence: 99%