exceptions
Collection
Data and models for "Manipulating language models’ training data to study syntactic constraint learning: the case of English passivization"
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49 items
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Updated
This model is a fine-tuned version of on an unknown dataset. It achieves the following results on the evaluation set:
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The following hyperparameters were used during training:
| Training Loss | Epoch | Step | Validation Loss | Accuracy |
|---|---|---|---|---|
| 5.1125 | 0.1078 | 1000 | 5.0240 | 0.2273 |
| 4.5843 | 0.2156 | 2000 | 4.5046 | 0.2714 |
| 4.3107 | 0.3235 | 3000 | 4.2323 | 0.2990 |
| 4.1545 | 0.4313 | 4000 | 4.0870 | 0.3125 |
| 4.0621 | 0.5391 | 5000 | 4.0006 | 0.3208 |
| 4.001 | 0.6469 | 6000 | 3.9160 | 0.3281 |
| 3.9268 | 0.7547 | 7000 | 3.8637 | 0.3332 |
| 3.882 | 0.8625 | 8000 | 3.8152 | 0.3379 |
| 3.8406 | 0.9704 | 9000 | 3.7795 | 0.3405 |
| 3.7776 | 1.0782 | 10000 | 3.7567 | 0.3441 |
| 3.7378 | 1.1860 | 11000 | 3.7236 | 0.3475 |
| 3.7355 | 1.2938 | 12000 | 3.7023 | 0.3491 |
| 3.7107 | 1.4016 | 13000 | 3.6805 | 0.3514 |
| 3.7005 | 1.5094 | 14000 | 3.6586 | 0.3534 |
| 3.6782 | 1.6173 | 15000 | 3.6409 | 0.3553 |
| 3.6771 | 1.7251 | 16000 | 3.6200 | 0.3569 |
| 3.6631 | 1.8329 | 17000 | 3.6075 | 0.3583 |
| 3.6446 | 1.9407 | 18000 | 3.5916 | 0.3598 |
| 3.5595 | 2.0485 | 19000 | 3.5814 | 0.3615 |
| 3.5597 | 2.1563 | 20000 | 3.5742 | 0.3624 |
| 3.5616 | 2.2642 | 21000 | 3.5634 | 0.3635 |
| 3.5446 | 2.3720 | 22000 | 3.5524 | 0.3644 |
| 3.5515 | 2.4798 | 23000 | 3.5413 | 0.3653 |
| 3.5416 | 2.5876 | 24000 | 3.5337 | 0.3665 |
| 3.5269 | 2.6954 | 25000 | 3.5241 | 0.3671 |
| 3.5393 | 2.8032 | 26000 | 3.5148 | 0.3685 |
| 3.5236 | 2.9111 | 27000 | 3.5071 | 0.3690 |
| 3.4462 | 3.0189 | 28000 | 3.5028 | 0.3702 |
| 3.4405 | 3.1267 | 29000 | 3.4963 | 0.3704 |
| 3.468 | 3.2345 | 30000 | 3.4904 | 0.3716 |
| 3.4749 | 3.3423 | 31000 | 3.4830 | 0.3723 |
| 3.4634 | 3.4501 | 32000 | 3.4755 | 0.3731 |
| 3.4541 | 3.5580 | 33000 | 3.4708 | 0.3732 |
| 3.4549 | 3.6658 | 34000 | 3.4651 | 0.3743 |
| 3.4706 | 3.7736 | 35000 | 3.4588 | 0.3750 |
| 3.4377 | 3.8814 | 36000 | 3.4547 | 0.3753 |
| 3.4194 | 3.9892 | 37000 | 3.4472 | 0.3756 |
| 3.3615 | 4.0970 | 38000 | 3.4490 | 0.3762 |
| 3.3852 | 4.2049 | 39000 | 3.4475 | 0.3766 |
| 3.4006 | 4.3127 | 40000 | 3.4418 | 0.3768 |
| 3.4161 | 4.4205 | 41000 | 3.4352 | 0.3779 |
| 3.3901 | 4.5283 | 42000 | 3.4316 | 0.3782 |
| 3.4087 | 4.6361 | 43000 | 3.4247 | 0.3790 |
| 3.3934 | 4.7439 | 44000 | 3.4211 | 0.3793 |
| 3.391 | 4.8518 | 45000 | 3.4142 | 0.3800 |
| 3.3877 | 4.9596 | 46000 | 3.4123 | 0.3802 |
| 3.3146 | 5.0674 | 47000 | 3.4130 | 0.3806 |
| 3.3089 | 5.1752 | 48000 | 3.4128 | 0.3808 |
| 3.3293 | 5.2830 | 49000 | 3.4085 | 0.3813 |
| 3.3418 | 5.3908 | 50000 | 3.4017 | 0.3818 |
| 3.3174 | 5.4987 | 51000 | 3.3982 | 0.3820 |
| 3.329 | 5.6065 | 52000 | 3.3947 | 0.3824 |
| 3.3429 | 5.7143 | 53000 | 3.3912 | 0.3830 |
| 3.3239 | 5.8221 | 54000 | 3.3861 | 0.3835 |
| 3.3279 | 5.9299 | 55000 | 3.3820 | 0.3839 |
| 3.239 | 6.0377 | 56000 | 3.3849 | 0.3838 |
| 3.2688 | 6.1456 | 57000 | 3.3839 | 0.3842 |
| 3.2762 | 6.2534 | 58000 | 3.3817 | 0.3844 |
| 3.2943 | 6.3612 | 59000 | 3.3772 | 0.3848 |
| 3.2847 | 6.4690 | 60000 | 3.3734 | 0.3852 |
| 3.2762 | 6.5768 | 61000 | 3.3690 | 0.3857 |
| 3.2792 | 6.6846 | 62000 | 3.3652 | 0.3860 |
| 3.2876 | 6.7925 | 63000 | 3.3613 | 0.3865 |
| 3.3024 | 6.9003 | 64000 | 3.3561 | 0.3868 |
| 3.2097 | 7.0081 | 65000 | 3.3606 | 0.3867 |
| 3.2216 | 7.1159 | 66000 | 3.3589 | 0.3875 |
| 3.2324 | 7.2237 | 67000 | 3.3576 | 0.3874 |
| 3.2145 | 7.3315 | 68000 | 3.3548 | 0.3878 |
| 3.2498 | 7.4394 | 69000 | 3.3506 | 0.3881 |
| 3.2347 | 7.5472 | 70000 | 3.3484 | 0.3886 |
| 3.2366 | 7.6550 | 71000 | 3.3433 | 0.3890 |
| 3.2311 | 7.7628 | 72000 | 3.3418 | 0.3894 |
| 3.2317 | 7.8706 | 73000 | 3.3353 | 0.3896 |
| 3.2455 | 7.9784 | 74000 | 3.3325 | 0.3900 |
| 3.1594 | 8.0863 | 75000 | 3.3395 | 0.3897 |
| 3.1872 | 8.1941 | 76000 | 3.3382 | 0.3898 |
| 3.1757 | 8.3019 | 77000 | 3.3341 | 0.3905 |
| 3.193 | 8.4097 | 78000 | 3.3314 | 0.3909 |
| 3.1788 | 8.5175 | 79000 | 3.3288 | 0.3910 |
| 3.1767 | 8.6253 | 80000 | 3.3249 | 0.3916 |
| 3.1896 | 8.7332 | 81000 | 3.3198 | 0.3921 |
| 3.1942 | 8.8410 | 82000 | 3.3171 | 0.3922 |
| 3.1726 | 8.9488 | 83000 | 3.3140 | 0.3926 |
| 3.1085 | 9.0566 | 84000 | 3.3178 | 0.3926 |
| 3.1471 | 9.1644 | 85000 | 3.3154 | 0.3928 |
| 3.1328 | 9.2722 | 86000 | 3.3146 | 0.3931 |
| 3.122 | 9.3801 | 87000 | 3.3118 | 0.3932 |
| 3.1391 | 9.4879 | 88000 | 3.3092 | 0.3936 |
| 3.1324 | 9.5957 | 89000 | 3.3066 | 0.3939 |
| 3.1338 | 9.7035 | 90000 | 3.3049 | 0.3941 |
| 3.1342 | 9.8113 | 91000 | 3.3029 | 0.3943 |
| 3.1426 | 9.9191 | 92000 | 3.3016 | 0.3945 |