2022
DOI: 10.1007/s10462-022-10183-8
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State of the art: a review of sentiment analysis based on sequential transfer learning

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Cited by 94 publications
(37 citation statements)
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“…Some researchers also discussed web tools (Zucco et al 2020), fuzzy logic algorithms (Serrano-Guerrero et al 2021), transformer models (Acheampong et al 2021), and sequential transfer learning (Chan et al 2022) for sentiment analysis.…”
Section: Surveys On Methods Of Sentiment Analysismentioning
confidence: 99%
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“…Some researchers also discussed web tools (Zucco et al 2020), fuzzy logic algorithms (Serrano-Guerrero et al 2021), transformer models (Acheampong et al 2021), and sequential transfer learning (Chan et al 2022) for sentiment analysis.…”
Section: Surveys On Methods Of Sentiment Analysismentioning
confidence: 99%
“…Acheampong et al (2021),Ain et al (2017),Alamoodi et al (2021a, b),Asghar et al (2014),Chan et al (2022),Cheng et al (2022), Feldman (2013,Habimana et al (2020),Koto and Adriani (2015),Kumar and Sebastian (2012);Medhat et al (2014),Prabha and Srikanth (2019),Ravi and Ravi (2015),Schouten and Frasincar (2015), Serrano-Guerrero et al (2021), Taboada (2016), Wang et al (2020b), Yue et al (2019), Zhang et al (2018), and Zucco et al (2020) The existing surveys analyzed different methods of sentiment analysis. Sentiment analysis methods based on lexicons, rules, part of speech, term position, statistical techniques, supervised and unsupervised machine learning methods, as well as deep learning methods like LSTM, CNN, RNN, DNN, DBN, BERT and other hybrid approaches have been analyzed and discussed.…”
mentioning
confidence: 99%
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“…Thus, PLMs can be proved to be advantageous to solve similar new tasks using old experience, without training the sentiment analysis model from the scratch. Chan et al (2022) provided a detailed study on the evolution and advancement of sentiment analysis using pretrained models. Additionally, the authors covered various tasks of sentiment analysis, for which the pretrained models can be used.…”
Section: B Unsupervised Learningmentioning
confidence: 99%
“…According to the study [44], existing sentiment classification techniques usually fall into three categories: (1) lexicon-based approach to compound a sentiment dictionary to determine the sentiment polarity of each word, (2) Machine Learning approach to train a sentiment classifier based on the statistical semantic features such as n-gram, Term frequency-inverse document frequency (TF-IDF), bag-of-word, etc., and (3) Deep Learning approach to automatically extract the feature representation via the neural network for sentiment measure. In addition, the study [45] reviewed the sequential transfer learning approaches in analyzing different sentiment-oriented tasks.…”
Section: Sentiment-based Stock Forecasting Approachmentioning
confidence: 99%