Feb. 18, 2022, 4:22 p.m. | Synced

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A research team from the University of Hong Kong, Shanghai AI Lab, Huawei Noah’s Ark Lab and the University of Washington takes dataset generation methods via large-scale pretrained language models (PLMs) to the extreme with ZEROGEN, a flexible and efficient zero-shot learning framework via dataset generation.


The post Meet ZEROGEN: An Extreme Method for Dataset Generation via PLMs for Zero-Shot Learning first appeared on Synced.

ai artificial intelligence dataset dataset generation learning machine learning machine learning & data science ml pretrained language model research technology zero shot learning

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