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logseq/assets/ase2023-jf-paper98_1687870120885_0.edn
2025-06-05 22:07:12 +02:00

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:content {:text "Evaluating Pre-Trained Models for User Feedback Analysis in Software Engineering: A Study on Classification of App-Reviews"},
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:content {:text " PLMs are pre-trained on large natural language corpora, they have learned knowledge that can be transferred for other tasks and domains in zero-shot (i.e., no labeled data is available) or few shot settings (i.e., only a few labeled data is available for training)."},
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