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A study that aims to unfold what emotions did Filipino students manifest during a year of Covid-19 quarantines.

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Taglish-Emotion-Recognition-of-Students-during-COVID-19

A study that aims to unfold what emotions did Filipino students manifest during a year of Covid-19 quarantines.

Data and Preprocessing

  • taken from tweeter with keywords relating to words such as 'aral'(study), 'school', 'online class', 'COVID-19' which consists of Taglish (tagalog-english) tweets.
  • clean tweets -> translate
  • annotate the emotions
  • two sampling methods: oversampling with text augmentation, and undersampling

Models

  • 100-d Glove word embedding
  • Support Vector Machine, Bernoulli Naïve Bayes, and Bi-directional Gated Recurrent Unit with Attention mechanism
  • compares SVM and BNB (commonly used algorithm for Tagalog Emotion Recognition) to a Neural network with attention mechanism
  • experiment on the two sampling strategy with the three models

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A study that aims to unfold what emotions did Filipino students manifest during a year of Covid-19 quarantines.

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