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Hyperparameters for GLUE: |
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- Learning rate: 5e-5 |
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- Batch size: 64 |
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- Max epochs: 10 |
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- Patience: 10 (for CoLA, MRPC, RTE, BoolQ, MultiRC, and WSC), 100 (for MNLI, QQP, QNLI, and SST-2) |
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- Random seed: 12 |
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- Weight decay: 0.1 |
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- Warmup ratio: 0.1 |
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- Learning rate scheduler: cosine |
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- Eval strategy: epoch (for CoLA, MRPC, RTE, BoolQ, MultiRC, and WSC), steps (for MNLI, QQP, QNLI, and SST-2) |
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- Eval every: 1 (for CoLA, MRPC, RTE, BoolQ, MultiRC, and WSC), 200 (for SST-2 and QNLI), 500 (for MNLI and QQP) |
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Hyperparameters for MSGS: |
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- Learning rate: 5e-5 (for CR, SC, RP, MV_RTP, and SC_LC), 1.5e-5 (for LC), 1e-5 (for SC_RP), 8e-6 (for MV_LC), 5e-6 (for MV), 5e-7 (CR_LC) |
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- Batch size: 32 |
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- Max epochs: 10 (for CR, SC, RP, MV_RTP, SC_LC, SC_RP, MV, and CR_LC), 3 (for LC), 5 (for MV_LC) |
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- Patience: 10 (for CR, SC, RP, MV_RTP, SC_LC, SC_RP, MV, and CR_LC), 3 (for LC), 5 (for MV_LC) |
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- Random seed: 12 |
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- Weight decay: 0.1 |
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- Warmup ratio: 0.1 |
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- Learning rate scheduler: cosine |
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- Eval strategy: epoch |
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- Eval every: 1 |