Sentiment Analysis Using State of the Art Machine Learning Techniques

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Springer International Publishing Ag

Erişim Hakkı

info:eu-repo/semantics/openAccess

Özet

Sentiment analysis is one of the essential and challenging tasks in the Artificial Intelligence field due to the complexity of the languages. Models that use rule-based and machine learning-based techniques have become popular. However, existing models have been under-performing in classifying irony, sarcasm, and subjectivity in the text. In this paper, we aim to deploy and evaluate the performances of the State-of-the-Art machine learning sentiment analysis techniques on a public IMDB dataset. The dataset includes many samples of irony and sarcasm. Long-short term memory (LSTM), bag of tricks (BoT), convolutional neural networks (CNN), and transformer-based models are developed and evaluated. In addition, we have examined the effect of hyper-parameters on the accuracy of the models.

Açıklama

9th Machine Intelligence and Digital Interaction Conference (MIDI) -- DEC 09-10, 2021 -- Warsaw, POLAND

Anahtar Kelimeler

Sentiment analysis, Bag of tricks, Transformer, BERT, CNN

Kaynak

Digital Interaction and Machine Intelligence, Midi 2021

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440

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Onay

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