2022-08-25 06:06:10,564 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:10,565 Model: "SequenceTagger( (embeddings): StackedEmbeddings( (list_embedding_0): FlairEmbeddings( (lm): LanguageModel( (drop): Dropout(p=0.25, inplace=False) (encoder): Embedding(275, 100) (rnn): LSTM(100, 2048) (decoder): Linear(in_features=2048, out_features=275, bias=True) ) ) (list_embedding_1): FlairEmbeddings( (lm): LanguageModel( (drop): Dropout(p=0.25, inplace=False) (encoder): Embedding(275, 100) (rnn): LSTM(100, 2048) (decoder): Linear(in_features=2048, out_features=275, bias=True) ) ) ) (word_dropout): WordDropout(p=0.05) (locked_dropout): LockedDropout(p=0.5) (embedding2nn): Linear(in_features=4096, out_features=4096, bias=True) (rnn): LSTM(4096, 256, batch_first=True, bidirectional=True) (linear): Linear(in_features=512, out_features=47, bias=True) (loss_function): ViterbiLoss() (crf): CRF() )" 2022-08-25 06:06:10,567 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:10,567 Corpus: "Corpus: 100 train + 20 dev + 20 test sentences" 2022-08-25 06:06:10,567 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:10,568 Parameters: 2022-08-25 06:06:10,568 - learning_rate: "0.100000" 2022-08-25 06:06:10,568 - mini_batch_size: "32" 2022-08-25 06:06:10,568 - patience: "3" 2022-08-25 06:06:10,569 - anneal_factor: "0.5" 2022-08-25 06:06:10,569 - max_epochs: "10" 2022-08-25 06:06:10,569 - shuffle: "True" 2022-08-25 06:06:10,569 - train_with_dev: "False" 2022-08-25 06:06:10,570 - batch_growth_annealing: "False" 2022-08-25 06:06:10,570 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:10,571 Model training base path: "db/kgc_models/test-kgc-sm-flair/trained_model" 2022-08-25 06:06:10,571 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:10,571 Device: cuda:0 2022-08-25 06:06:10,571 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:10,572 Embeddings storage mode: gpu 2022-08-25 06:06:10,572 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:10,659 epoch 1 - iter 1/4 - loss 4.03916875 - samples/sec: 371.51 - lr: 0.100000 2022-08-25 06:06:10,731 epoch 1 - iter 2/4 - loss 3.89573674 - samples/sec: 443.37 - lr: 0.100000 2022-08-25 06:06:10,805 epoch 1 - iter 3/4 - loss 3.73763981 - samples/sec: 441.41 - lr: 0.100000 2022-08-25 06:06:10,853 epoch 1 - iter 4/4 - loss 3.73055211 - samples/sec: 669.71 - lr: 0.100000 2022-08-25 06:06:10,854 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:10,854 EPOCH 1 done: loss 3.7306 - lr 0.100000 2022-08-25 06:06:10,934 Evaluating as a multi-label problem: False 2022-08-25 06:06:10,941 DEV : loss 3.0921895503997803 - f1-score (micro avg) 0.3087 2022-08-25 06:06:10,942 BAD EPOCHS (no improvement): 0 2022-08-25 06:06:10,944 saving best model 2022-08-25 06:06:12,789 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:12,816 epoch 2 - iter 1/4 - loss 2.91073551 - samples/sec: 1237.62 - lr: 0.100000 2022-08-25 06:06:12,842 epoch 2 - iter 2/4 - loss 2.94079960 - samples/sec: 1251.27 - lr: 0.100000 2022-08-25 06:06:12,874 epoch 2 - iter 3/4 - loss 2.78518824 - samples/sec: 1014.72 - lr: 0.100000 2022-08-25 06:06:12,891 epoch 2 - iter 4/4 - loss 2.80299381 - samples/sec: 1978.97 - lr: 0.100000 2022-08-25 06:06:12,892 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:12,892 EPOCH 2 done: loss 2.8030 - lr 0.100000 2022-08-25 06:06:12,932 Evaluating as a multi-label problem: False 2022-08-25 06:06:12,939 DEV : loss 2.827807903289795 - f1-score (micro avg) 0.2556 2022-08-25 06:06:12,940 BAD EPOCHS (no improvement): 1 2022-08-25 06:06:12,941 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:13,054 epoch 3 - iter 1/4 - loss 2.59037260 - samples/sec: 284.59 - lr: 0.100000 2022-08-25 06:06:13,081 epoch 3 - iter 2/4 - loss 2.60334442 - samples/sec: 1216.48 - lr: 0.100000 2022-08-25 06:06:13,108 epoch 3 - iter 3/4 - loss 2.57638893 - samples/sec: 1264.18 - lr: 0.100000 2022-08-25 06:06:13,126 epoch 3 - iter 4/4 - loss 2.53864971 - samples/sec: 1827.04 - lr: 0.100000 2022-08-25 06:06:13,126 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:13,127 EPOCH 3 done: loss 2.5386 - lr 0.100000 2022-08-25 06:06:13,167 Evaluating as a multi-label problem: False 2022-08-25 06:06:13,173 DEV : loss 2.7169787883758545 - f1-score (micro avg) 0.3168 2022-08-25 06:06:13,174 BAD EPOCHS (no improvement): 0 2022-08-25 06:06:13,175 saving best model 2022-08-25 06:06:14,714 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:14,743 epoch 4 - iter 1/4 - loss 2.71329416 - samples/sec: 1140.13 - lr: 0.100000 2022-08-25 06:06:14,769 epoch 4 - iter 2/4 - loss 2.38254593 - samples/sec: 1254.42 - lr: 0.100000 2022-08-25 06:06:14,803 epoch 4 - iter 3/4 - loss 2.37460295 - samples/sec: 958.15 - lr: 0.100000 2022-08-25 06:06:14,825 epoch 4 - iter 4/4 - loss 2.37499146 - samples/sec: 1527.35 - lr: 0.100000 2022-08-25 06:06:14,826 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:14,826 EPOCH 4 done: loss 2.3750 - lr 0.100000 2022-08-25 06:06:14,864 Evaluating as a multi-label problem: False 2022-08-25 06:06:14,870 DEV : loss 2.749277114868164 - f1-score (micro avg) 0.0 2022-08-25 06:06:14,871 BAD EPOCHS (no improvement): 1 2022-08-25 06:06:14,872 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:14,901 epoch 5 - iter 1/4 - loss 2.32981579 - samples/sec: 1152.14 - lr: 0.100000 2022-08-25 06:06:14,928 epoch 5 - iter 2/4 - loss 2.20069920 - samples/sec: 1219.29 - lr: 0.100000 2022-08-25 06:06:14,965 epoch 5 - iter 3/4 - loss 2.27754946 - samples/sec: 869.53 - lr: 0.100000 2022-08-25 06:06:14,986 epoch 5 - iter 4/4 - loss 2.25410557 - samples/sec: 1547.91 - lr: 0.100000 2022-08-25 06:06:14,987 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:14,987 EPOCH 5 done: loss 2.2541 - lr 0.100000 2022-08-25 06:06:15,029 Evaluating as a multi-label problem: False 2022-08-25 06:06:15,047 DEV : loss 2.7171242237091064 - f1-score (micro avg) 0.2903 2022-08-25 06:06:15,049 BAD EPOCHS (no improvement): 2 2022-08-25 06:06:15,050 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:15,089 epoch 6 - iter 1/4 - loss 2.18811890 - samples/sec: 858.42 - lr: 0.100000 2022-08-25 06:06:15,124 epoch 6 - iter 2/4 - loss 2.14233002 - samples/sec: 929.04 - lr: 0.100000 2022-08-25 06:06:15,156 epoch 6 - iter 3/4 - loss 2.20570734 - samples/sec: 1025.55 - lr: 0.100000 2022-08-25 06:06:15,173 epoch 6 - iter 4/4 - loss 2.18303889 - samples/sec: 1924.88 - lr: 0.100000 2022-08-25 06:06:15,174 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:15,174 EPOCH 6 done: loss 2.1830 - lr 0.100000 2022-08-25 06:06:15,210 Evaluating as a multi-label problem: False 2022-08-25 06:06:15,217 DEV : loss 2.6913464069366455 - f1-score (micro avg) 0.2314 2022-08-25 06:06:15,218 BAD EPOCHS (no improvement): 3 2022-08-25 06:06:15,220 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:15,253 epoch 7 - iter 1/4 - loss 2.14348509 - samples/sec: 988.78 - lr: 0.100000 2022-08-25 06:06:15,281 epoch 7 - iter 2/4 - loss 2.00850553 - samples/sec: 1178.96 - lr: 0.100000 2022-08-25 06:06:15,308 epoch 7 - iter 3/4 - loss 2.06308898 - samples/sec: 1208.59 - lr: 0.100000 2022-08-25 06:06:15,327 epoch 7 - iter 4/4 - loss 2.06392736 - samples/sec: 1723.48 - lr: 0.100000 2022-08-25 06:06:15,327 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:15,328 EPOCH 7 done: loss 2.0639 - lr 0.100000 2022-08-25 06:06:15,368 Evaluating as a multi-label problem: False 2022-08-25 06:06:15,376 DEV : loss 2.2334768772125244 - f1-score (micro avg) 0.5 2022-08-25 06:06:15,377 BAD EPOCHS (no improvement): 0 2022-08-25 06:06:15,381 saving best model 2022-08-25 06:06:16,903 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:16,938 epoch 8 - iter 1/4 - loss 1.97582934 - samples/sec: 924.66 - lr: 0.100000 2022-08-25 06:06:16,971 epoch 8 - iter 2/4 - loss 1.89160690 - samples/sec: 1003.74 - lr: 0.100000 2022-08-25 06:06:17,003 epoch 8 - iter 3/4 - loss 1.92096321 - samples/sec: 1015.15 - lr: 0.100000 2022-08-25 06:06:17,024 epoch 8 - iter 4/4 - loss 1.90466607 - samples/sec: 1613.37 - lr: 0.100000 2022-08-25 06:06:17,024 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:17,025 EPOCH 8 done: loss 1.9047 - lr 0.100000 2022-08-25 06:06:17,076 Evaluating as a multi-label problem: False 2022-08-25 06:06:17,086 DEV : loss 2.3985493183135986 - f1-score (micro avg) 0.3448 2022-08-25 06:06:17,087 BAD EPOCHS (no improvement): 1 2022-08-25 06:06:17,090 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:17,130 epoch 9 - iter 1/4 - loss 1.87079010 - samples/sec: 826.37 - lr: 0.100000 2022-08-25 06:06:17,167 epoch 9 - iter 2/4 - loss 1.85216901 - samples/sec: 864.81 - lr: 0.100000 2022-08-25 06:06:17,203 epoch 9 - iter 3/4 - loss 1.90496054 - samples/sec: 924.19 - lr: 0.100000 2022-08-25 06:06:17,225 epoch 9 - iter 4/4 - loss 1.89038416 - samples/sec: 1452.27 - lr: 0.100000 2022-08-25 06:06:17,226 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:17,226 EPOCH 9 done: loss 1.8904 - lr 0.100000 2022-08-25 06:06:17,276 Evaluating as a multi-label problem: False 2022-08-25 06:06:17,284 DEV : loss 2.121741533279419 - f1-score (micro avg) 0.4627 2022-08-25 06:06:17,285 BAD EPOCHS (no improvement): 2 2022-08-25 06:06:17,288 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:17,323 epoch 10 - iter 1/4 - loss 1.80540347 - samples/sec: 930.59 - lr: 0.100000 2022-08-25 06:06:17,354 epoch 10 - iter 2/4 - loss 1.72573052 - samples/sec: 1054.27 - lr: 0.100000 2022-08-25 06:06:17,386 epoch 10 - iter 3/4 - loss 1.77370743 - samples/sec: 1004.27 - lr: 0.100000 2022-08-25 06:06:17,407 epoch 10 - iter 4/4 - loss 1.75549973 - samples/sec: 1615.25 - lr: 0.100000 2022-08-25 06:06:17,407 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:17,408 EPOCH 10 done: loss 1.7555 - lr 0.100000 2022-08-25 06:06:17,453 Evaluating as a multi-label problem: False 2022-08-25 06:06:17,461 DEV : loss 2.2982170581817627 - f1-score (micro avg) 0.3333 2022-08-25 06:06:17,462 BAD EPOCHS (no improvement): 3 2022-08-25 06:06:19,099 ---------------------------------------------------------------------------------------------------- 2022-08-25 06:06:19,100 loading file db/kgc_models/test-kgc-sm-flair/trained_model/best-model.pt 2022-08-25 06:06:27,749 SequenceTagger predicts: Dictionary with 47 tags: O, S-Item, B-Item, E-Item, I-Item, S-Activity, B-Activity, E-Activity, I-Activity, S-Observation, B-Observation, E-Observation, I-Observation, S-Location, B-Location, E-Location, I-Location, S-Consumable, B-Consumable, E-Consumable, I-Consumable, S-Agent, B-Agent, E-Agent, I-Agent, S-Attribute, B-Attribute, E-Attribute, I-Attribute, S-Specifier, B-Specifier, E-Specifier, I-Specifier, S-Cardinality, B-Cardinality, E-Cardinality, I-Cardinality, S-Event, B-Event, E-Event, I-Event, S-Time, B-Time, E-Time, I-Time, , 2022-08-25 06:06:28,150 Evaluating as a multi-label problem: False 2022-08-25 06:06:28,159 0.3281 0.3333 0.3307 0.2386 2022-08-25 06:06:28,159 Results: - F-score (micro) 0.3307 - F-score (macro) 0.125 - Accuracy 0.2386 By class: precision recall f1-score support Item 0.2679 0.6250 0.3750 24 Activity 0.8571 0.6667 0.7500 9 Observation 0.0000 0.0000 0.0000 13 Location 0.0000 0.0000 0.0000 5 Consumable 0.0000 0.0000 0.0000 4 Agent 0.0000 0.0000 0.0000 3 Cardinality 0.0000 0.0000 0.0000 2 Time 0.0000 0.0000 0.0000 2 Attribute 0.0000 0.0000 0.0000 1 micro avg 0.3281 0.3333 0.3307 63 macro avg 0.1250 0.1435 0.1250 63 weighted avg 0.2245 0.3333 0.2500 63 2022-08-25 06:06:28,160 ----------------------------------------------------------------------------------------------------