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Source code for IJCAI 2022 Long paper: Parameter-Efficient Sparsity for Large Language Models Fine-Tuning.

Shell 2.15% Python 97.85%

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pst's Issues

cannot reproduce the results with sparsity=0.9 in cola dataset

Hello. I'm very interested in your work and glad to your released code. However, I meet problem when I reproduce the results with sparsity=0.9 in cola dataset with your code. The matthews_correlation only gets 0.25. My training setting follows your paper, which contains lr=5e-3, epoch=20/40. Can you offer some suggestions for my reproduce? Thanks for your help

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