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Unsupervised Self-Training for Sentiment Analysis of Code-Switched Data (2103.14797v2)

Published 27 Mar 2021 in cs.CL and cs.LG

Abstract: Sentiment analysis is an important task in understanding social media content like customer reviews, Twitter and Facebook feeds etc. In multilingual communities around the world, a large amount of social media text is characterized by the presence of Code-Switching. Thus, it has become important to build models that can handle code-switched data. However, annotated code-switched data is scarce and there is a need for unsupervised models and algorithms. We propose a general framework called Unsupervised Self-Training and show its applications for the specific use case of sentiment analysis of code-switched data. We use the power of pre-trained BERT models for initialization and fine-tune them in an unsupervised manner, only using pseudo labels produced by zero-shot transfer. We test our algorithm on multiple code-switched languages and provide a detailed analysis of the learning dynamics of the algorithm with the aim of answering the question - `Does our unsupervised model understand the Code-Switched languages or does it just learn its representations?'. Our unsupervised models compete well with their supervised counterparts, with their performance reaching within 1-7\% (weighted F1 scores) when compared to supervised models trained for a two class problem.

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Authors (4)
  1. Akshat Gupta (41 papers)
  2. Sargam Menghani (1 paper)
  3. Sai Krishna Rallabandi (11 papers)
  4. Alan W Black (83 papers)
Citations (14)

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