AtharvaMalvade2
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README.md
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# Multi-Label-Classification-of-Pubmed-Articles
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The traditional machine learning models give a lot of pain when we do not have sufficient labeled data for the specific task or domain we care about to train a reliable model.
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Also tried **RobertaForSequenceClassification** and **XLNetForSequenceClassification** models for Fine-Tuning the Model on Pubmed MultiLabel Datset.
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# Multi-Label-Classification-of-Pubmed-Articles
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The traditional machine learning models give a lot of pain when we do not have sufficient labeled data for the specific task or domain we care about to train a reliable model. It allows us to deal with these scenarios by leveraging the already existing labeled data of some related task or domain. We try to store this knowledge gained in solving the source task in the source domain and apply it to our problem of interest.
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