2022
DOI: 10.48550/arxiv.2205.12393
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Fine-tuned Language Models are Continual Learners

Abstract: Recent work on large language models relies on the intuition that most natural language processing tasks can be described via natural language instructions. Language models trained on these instructions show strong zero-shot performance on several standard datasets. However, these models even though impressive still perform poorly on a wide range of tasks outside of their respective training and evaluation sets. To address this limitation, we argue that a model should be able to keep extending its knowledge an… Show more

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