Korean ALBERT
Dataset
Evaluation results
- The code for finetuning can be found at KcBERT-Finetune.
Size(용량) | Average Score | NSMC (acc) |
Naver NER (F1) |
PAWS (acc) |
KorNLI (acc) |
KorSTS (spearman) |
Question Pair (acc) |
KorQuaD (Dev) (EM/F1) |
|
---|---|---|---|---|---|---|---|---|---|
KcELECTRA-base | 475M | 84.84 | 91.71 | 86.90 | 74.80 | 81.65 | 82.65 | 95.78 | 70.60 / 90.11 |
KcELECTRA-base-v2022 | 475M | 85.20 | 91.97 | 87.35 | 76.50 | 82.12 | 83.67 | 95.12 | 69.00 / 90.40 |
KcBERT-Base | 417M | 79.65 | 89.62 | 84.34 | 66.95 | 74.85 | 75.57 | 93.93 | 60.25 / 84.39 |
KcBERT-Large | 1.2G | 81.33 | 90.68 | 85.53 | 70.15 | 76.99 | 77.49 | 94.06 | 62.16 / 86.64 |
KoBERT | 351M | 82.21 | 89.63 | 86.11 | 80.65 | 79.00 | 79.64 | 93.93 | 52.81 / 80.27 |
XLM-Roberta-Base | 1.03G | 84.01 | 89.49 | 86.26 | 82.95 | 79.92 | 79.09 | 93.53 | 64.70 / 88.94 |
HanBERT | 614M | 86.24 | 90.16 | 87.31 | 82.40 | 80.89 | 83.33 | 94.19 | 78.74 / 92.02 |
KoELECTRA-Base | 423M | 84.66 | 90.21 | 86.87 | 81.90 | 80.85 | 83.21 | 94.20 | 61.10 / 89.59 |
KoELECTRA-Base-v2 | 423M | 86.96 | 89.70 | 87.02 | 83.90 | 80.61 | 84.30 | 94.72 | 84.34 / 92.58 |
DistilKoBERT | 108M | 76.76 | 88.41 | 84.13 | 62.55 | 70.55 | 73.21 | 92.48 | 54.12 / 77.80 |
ko-albert-base-v1 | 51M | 80.46 | 86.83 | 82.26 | 69.95 | 74.17 | 74.48 | 94.06 | 76.08 / 86.82 |
ko-albert-large-v1 | 75M | 82.39 | 86.91 | 83.12 | 76.10 | 76.01 | 77.46 | 94.33 | 77.64 / 87.99 |
*The size of HanBERT is the sum of the BERT model and the tokenizer DB.
*These results were obtained using the default configuration settings. Better performance may be achieved with additional hyperparameter tuning.
How to use
from transformers import AutoTokenizer, AutoModel
# Base Model (51M)
tokenizer = AutoTokenizer.from_pretrained("lots-o/ko-albert-base-v1")
model = AutoModel.from_pretrained("lots-o/ko-albert-base-v1")
# Large Model (75M)
tokenizer = AutoTokenizer.from_pretrained("lots-o/ko-albert-large-v1")
model = AutoModel.from_pretrained("lots-o/ko-albert-large-v1")
Acknowledgement
- The GCP/TPU environment used for training the ALBERT Model was supported by the TRC program.
Reference
Paper
Github Repos
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