Poorvi Shetty


2024

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Overview of Third Shared Task on Homophobia and Transphobia Detection in Social Media Comments
Bharathi Raja Chakravarthi | Prasanna Kumaresan | Ruba Priyadharshini | Paul Buitelaar | Asha Hegde | Hosahalli Shashirekha | Saranya Rajiakodi | Miguel Ángel García | Salud María Jiménez-Zafra | José García-Díaz | Rafael Valencia-García | Kishore Ponnusamy | Poorvi Shetty | Daniel García-Baena
Proceedings of the Fourth Workshop on Language Technology for Equality, Diversity, Inclusion

This paper provides a comprehensive summary of the “Homophobia and Transphobia Detection in Social Media Comments” shared task, which was held at the LT-EDI@EACL 2024. The objective of this task was to develop systems capable of identifying instances of homophobia and transphobia within social media comments. This challenge was extended across ten languages: English, Tamil, Malayalam, Telugu, Kannada, Gujarati, Hindi, Marathi, Spanish, and Tulu. Each comment in the dataset was annotated into three categories. The shared task attracted significant interest, with over 60 teams participating through the CodaLab platform. The submission of prediction from the participants was evaluated with the macro F1 score.

2023

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Poorvi@DravidianLangTech: Sentiment Analysis on Code-Mixed Tulu and Tamil Corpus
Poorvi Shetty
Proceedings of the Third Workshop on Speech and Language Technologies for Dravidian Languages

Sentiment analysis in code-mixed languages poses significant challenges, particularly for highly under-resourced languages such as Tulu and Tamil. Existing corpora, primarily sourced from YouTube comments, suffer from class imbalance across sentiment categories. Moreover, the limited number of samples in these corpus hampers effective sentiment classification. This study introduces a new corpus tailored for sentiment analysis in Tulu code-mixed texts. The research applies standard pre-processing techniques to ensure data quality and consistency and handle class imbalance. Subsequently, multiple classifiers are employed to analyze the sentiment of the code-mixed texts, yielding promising results. By leveraging the new corpus, the study contributes to advancing sentiment analysis techniques in under-resourced code-mixed languages. This work serves as a stepping stone towards better understanding and addressing the challenges posed by sentiment analysis in highly under-resourced languages.