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MaCmS: Magahi Code-mixed Dataset for Sentiment Analysis

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arxiv 2403.04639 v2 pith:PYB7IUTB submitted 2024-03-07 cs.CL

MaCmS: Magahi Code-mixed Dataset for Sentiment Analysis

classification cs.CL
keywords datasetanalysiscode-mixedlanguagesentimentmacmsmagahimagahi-hindi-english
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The present paper introduces new sentiment data, MaCMS, for Magahi-Hindi-English (MHE) code-mixed language, where Magahi is a less-resourced minority language. This dataset is the first Magahi-Hindi-English code-mixed dataset for sentiment analysis tasks. Further, we also provide a linguistics analysis of the dataset to understand the structure of code-mixing and a statistical study to understand the language preferences of speakers with different polarities. With these analyses, we also train baseline models to evaluate the dataset's quality.

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