Tokenizer: allenai/longformer-base-4096 Model: allenai/longformer-base-4096
	Train size: 80 Test size: 20


		-------------RUN 1-----------
			------------EPOCH 1---------------
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				 {'precision': {'support': 0.5632183908045977, 'agreement': 0.75, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.06631299734748011}, 'recall': {'support': 0.19444444444444445, 'agreement': 0.027522935779816515, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.9259259259259259}, 'f1': {'support': 0.2890855457227139, 'agreement': 0.05309734513274336, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.12376237623762378}, 'support': {'support': 252, 'agreement': 109, 'direct_attack': 38, 'undercutter_attack': 42, 'partial': 27}, 'micro_avg': {'precision': 0.16452991452991453, 'recall': 0.16452991452991453, 'f1': 0.16452991452991453, 'support': None}, 'macro_avg': {'precision': 0.27590627763041553, 'recall': 0.22957866123003737, 'f1': 0.0931890534186162, 'support': None}, 'weighted_avg': {'precision': 0.48177667822893283, 'recall': 0.16452991452991453, 'f1': 0.17516827414531788, 'support': None}}
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				 {'precision': {'support': 0.7013888888888888, 'agreement': 0.5138888888888888, 'direct_attack': 0.21951219512195122, 'undercutter_attack': 0.2777777777777778, 'partial': 0.23076923076923078}, 'recall': {'support': 0.8015873015873016, 'agreement': 0.3394495412844037, 'direct_attack': 0.23684210526315788, 'undercutter_attack': 0.35714285714285715, 'partial': 0.1111111111111111}, 'f1': {'support': 0.7481481481481481, 'agreement': 0.4088397790055249, 'direct_attack': 0.2278481012658228, 'undercutter_attack': 0.31250000000000006, 'partial': 0.15}, 'support': {'support': 252, 'agreement': 109, 'direct_attack': 38, 'undercutter_attack': 42, 'partial': 27}, 'micro_avg': {'precision': 0.5683760683760684, 'recall': 0.5683760683760684, 'f1': 0.5683760683760684, 'support': None}, 'macro_avg': {'precision': 0.38866739628934754, 'recall': 0.3692265832777663, 'f1': 0.3694672056838991, 'support': None}, 'weighted_avg': {'precision': 0.5534247611131602, 'recall': 0.5683760683760684, 'f1': 0.5532694382329846, 'support': None}}


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			------------EPOCH 1---------------
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				 {'precision': {'support': 0.5714285714285714, 'agreement': 0.21311475409836064, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.0}, 'recall': {'support': 0.16161616161616163, 'agreement': 0.9122807017543859, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.0}, 'f1': {'support': 0.25196850393700787, 'agreement': 0.34551495016611294, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.0}, 'support': {'support': 297, 'agreement': 114, 'direct_attack': 37, 'undercutter_attack': 88, 'partial': 36}, 'micro_avg': {'precision': 0.26573426573426573, 'recall': 0.26573426573426573, 'f1': 0.26573426573426573, 'support': None}, 'macro_avg': {'precision': 0.15690866510538642, 'recall': 0.2147793726741095, 'f1': 0.11949669082062417, 'support': None}, 'weighted_avg': {'precision': 0.3391772162263965, 'recall': 0.26573426573426573, 'f1': 0.19969117130809128, 'support': None}}
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				 {'precision': {'support': 0.7727272727272727, 'agreement': 0.5909090909090909, 'direct_attack': 0.38095238095238093, 'undercutter_attack': 0.2413793103448276, 'partial': 0.13333333333333333}, 'recall': {'support': 0.8810975609756098, 'agreement': 0.4875, 'direct_attack': 0.17777777777777778, 'undercutter_attack': 0.28, 'partial': 0.06451612903225806}, 'f1': {'support': 0.8233618233618233, 'agreement': 0.5342465753424658, 'direct_attack': 0.24242424242424243, 'undercutter_attack': 0.25925925925925924, 'partial': 0.08695652173913043}, 'support': {'support': 328, 'agreement': 80, 'direct_attack': 45, 'undercutter_attack': 50, 'partial': 31}, 'micro_avg': {'precision': 0.6591760299625468, 'recall': 0.6591760299625468, 'f1': 0.6591760299625468, 'support': None}, 'macro_avg': {'precision': 0.4238602776533812, 'recall': 0.3781782935571291, 'f1': 0.3892496844253842, 'support': None}, 'weighted_avg': {'precision': 0.625603799102443, 'recall': 0.6591760299625468, 'f1': 0.6355245508165585, 'support': None}}


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			------------EPOCH 1---------------
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				 {'precision': {'support': 0.6105769230769231, 'agreement': 0.12121212121212122, 'direct_attack': 0.0, 'undercutter_attack': 0.1144578313253012, 'partial': 0.0}, 'recall': {'support': 0.4409722222222222, 'agreement': 0.14545454545454545, 'direct_attack': 0.0, 'undercutter_attack': 0.59375, 'partial': 0.0}, 'f1': {'support': 0.5120967741935485, 'agreement': 0.1322314049586777, 'direct_attack': 0.0, 'undercutter_attack': 0.19191919191919193, 'partial': 0.0}, 'support': {'support': 288, 'agreement': 55, 'direct_attack': 40, 'undercutter_attack': 32, 'partial': 25}, 'micro_avg': {'precision': 0.35, 'recall': 0.35, 'f1': 0.35, 'support': None}, 'macro_avg': {'precision': 0.1692493751228691, 'recall': 0.23603535353535351, 'f1': 0.16724947421428363, 'support': None}, 'weighted_avg': {'precision': 0.42312607071643216, 'recall': 0.35, 'f1': 0.3656773008679168, 'support': None}}
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				 {'precision': {'support': 0.7973856209150327, 'agreement': 0.4772727272727273, 'direct_attack': 0.6428571428571429, 'undercutter_attack': 0.25, 'partial': 0.4375}, 'recall': {'support': 0.8472222222222222, 'agreement': 0.38181818181818183, 'direct_attack': 0.225, 'undercutter_attack': 0.46875, 'partial': 0.28}, 'f1': {'support': 0.8215488215488217, 'agreement': 0.42424242424242425, 'direct_attack': 0.33333333333333337, 'undercutter_attack': 0.32608695652173914, 'partial': 0.34146341463414637}, 'support': {'support': 288, 'agreement': 55, 'direct_attack': 40, 'undercutter_attack': 32, 'partial': 25}, 'micro_avg': {'precision': 0.6727272727272727, 'recall': 0.6727272727272727, 'f1': 0.6727272727272727, 'support': None}, 'macro_avg': {'precision': 0.5210030982089806, 'recall': 0.4405580808080808, 'f1': 0.4493349900560929, 'support': None}, 'weighted_avg': {'precision': 0.6830655557677616, 'recall': 0.6727272727272727, 'f1': 0.6641911255619923, 'support': None}}


		-------------RUN 5-----------
			------------EPOCH 1---------------
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				 {'precision': {'support': 0.0, 'agreement': 0.13504823151125403, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.0}, 'recall': {'support': 0.0, 'agreement': 1.0, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.0}, 'f1': {'support': 0.0, 'agreement': 0.23796033994334279, 'direct_attack': 0.0, 'undercutter_attack': 0.0, 'partial': 0.0}, 'support': {'support': 425, 'agreement': 84, 'direct_attack': 57, 'undercutter_attack': 50, 'partial': 20}, 'micro_avg': {'precision': 0.1320754716981132, 'recall': 0.1320754716981132, 'f1': 0.1320754716981132, 'support': None}, 'macro_avg': {'precision': 0.027009646302250806, 'recall': 0.2, 'f1': 0.04759206798866856, 'support': None}, 'weighted_avg': {'precision': 0.01783655887884487, 'recall': 0.1320754716981132, 'f1': 0.03142872414346037, 'support': None}}
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			------------EPOCH 18---------------
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				 {'precision': {'support': 0.9125295508274232, 'agreement': 0.6065573770491803, 'direct_attack': 0.22950819672131148, 'undercutter_attack': 0.3230769230769231, 'partial': 0.2692307692307692}, 'recall': {'support': 0.908235294117647, 'agreement': 0.44047619047619047, 'direct_attack': 0.24561403508771928, 'undercutter_attack': 0.42, 'partial': 0.35}, 'f1': {'support': 0.910377358490566, 'agreement': 0.5103448275862069, 'direct_attack': 0.23728813559322032, 'undercutter_attack': 0.3652173913043478, 'partial': 0.3043478260869565}, 'support': {'support': 425, 'agreement': 84, 'direct_attack': 57, 'undercutter_attack': 50, 'partial': 20}, 'micro_avg': {'precision': 0.7311320754716981, 'recall': 0.7311320754716981, 'f1': 0.7311320754716981, 'support': None}, 'macro_avg': {'precision': 0.46818056338112146, 'recall': 0.47286510393631137, 'f1': 0.4655151078122596, 'support': None}, 'weighted_avg': {'precision': 0.7443338168637771, 'recall': 0.7311320754716981, 'f1': 0.7353028186973302, 'support': None}}
	Train size: 50 Test size: 50


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			------------EPOCH 1---------------
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			------------EPOCH 4---------------
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			------------EPOCH 6---------------
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			------------EPOCH 7---------------
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Loss: tensor(0.0006, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 8---------------
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				 {'precision': {'support': 0.752405949256343, 'agreement': 0.4567307692307692, 'direct_attack': 0.21875, 'undercutter_attack': 0.16666666666666666, 'partial': 0.18309859154929578}, 'recall': {'support': 0.8365758754863813, 'agreement': 0.4185022026431718, 'direct_attack': 0.09271523178807947, 'undercutter_attack': 0.1875, 'partial': 0.13541666666666666}, 'f1': {'support': 0.7922616305849839, 'agreement': 0.4367816091954023, 'direct_attack': 0.13023255813953488, 'undercutter_attack': 0.17647058823529413, 'partial': 0.15568862275449102}, 'support': {'support': 1028, 'agreement': 227, 'direct_attack': 151, 'undercutter_attack': 128, 'partial': 96}, 'micro_avg': {'precision': 0.6171779141104294, 'recall': 0.6171779141104294, 'f1': 0.6171779141104294, 'support': None}, 'macro_avg': {'precision': 0.3555303953406149, 'recall': 0.3341419953168599, 'f1': 0.3382870017819412, 'support': None}, 'weighted_avg': {'precision': 0.5822657966705344, 'recall': 0.6171779141104294, 'f1': 0.5955790434885512, 'support': None}}
Loss: tensor(0.0004, device='cuda:0', grad_fn=<DivBackward0>)
Loss: tensor(0.0017, device='cuda:0', grad_fn=<DivBackward0>)
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			------------EPOCH 9---------------
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Loss: tensor(0.0067, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 10---------------
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			------------EPOCH 11---------------
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Loss: tensor(0.0086, device='cuda:0', grad_fn=<DivBackward0>)
Loss: tensor(0.0001, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 12---------------
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Loss: tensor(0.0004, device='cuda:0', grad_fn=<DivBackward0>)
Loss: tensor(0.0003, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 13---------------
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			------------EPOCH 14---------------
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			------------EPOCH 19---------------
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			------------EPOCH 20---------------
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				 {'precision': {'support': 0.7441860465116279, 'agreement': 0.48226950354609927, 'direct_attack': 0.21686746987951808, 'undercutter_attack': 0.17277486910994763, 'partial': 0.2222222222222222}, 'recall': {'support': 0.8404669260700389, 'agreement': 0.29955947136563876, 'direct_attack': 0.11920529801324503, 'undercutter_attack': 0.2578125, 'partial': 0.125}, 'f1': {'support': 0.7894015532206486, 'agreement': 0.3695652173913044, 'direct_attack': 0.15384615384615385, 'undercutter_attack': 0.20689655172413793, 'partial': 0.16}, 'support': {'support': 1028, 'agreement': 227, 'direct_attack': 151, 'undercutter_attack': 128, 'partial': 96}, 'micro_avg': {'precision': 0.6104294478527608, 'recall': 0.6104294478527608, 'f1': 0.6104294478527608, 'support': None}, 'macro_avg': {'precision': 0.367664022253883, 'recall': 0.3284088390897845, 'f1': 0.33594189523644896, 'support': None}, 'weighted_avg': {'precision': 0.5832478145092834, 'recall': 0.6104294478527608, 'f1': 0.5892451711104981, 'support': None}}


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				 {'precision': {'support': 0.5, 'agreement': 0.13333333333333333, 'direct_attack': 0.0939183987682833, 'undercutter_attack': 0.0, 'partial': 0.0}, 'recall': {'support': 0.0011001100110011, 'agreement': 0.12290502793296089, 'direct_attack': 0.8970588235294118, 'undercutter_attack': 0.0, 'partial': 0.0}, 'f1': {'support': 0.0021953896816684962, 'agreement': 0.12790697674418605, 'direct_attack': 0.1700348432055749, 'undercutter_attack': 0.0, 'partial': 0.0}, 'support': {'support': 909, 'agreement': 179, 'direct_attack': 136, 'undercutter_attack': 152, 'partial': 90}, 'micro_avg': {'precision': 0.09890859481582538, 'recall': 0.09890859481582538, 'f1': 0.09890859481582538, 'support': None}, 'macro_avg': {'precision': 0.14545034642032334, 'recall': 0.20421279229467476, 'f1': 0.06002744192628588, 'support': None}, 'weighted_avg': {'precision': 0.3350201697811413, 'recall': 0.09890859481582538, 'f1': 0.03275286271064404, 'support': None}}
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Loss: tensor(0.0109, device='cuda:0', grad_fn=<DivBackward0>)
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Loss: tensor(0.0003, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 10---------------
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Loss: tensor(0.0012, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 11---------------
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			------------EPOCH 12---------------
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			------------EPOCH 13---------------
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Loss: tensor(0.0015, device='cuda:0', grad_fn=<DivBackward0>)
Loss: tensor(0.0013, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 15---------------
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Loss: tensor(0.0001, device='cuda:0', grad_fn=<DivBackward0>)
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Loss: tensor(0.0001, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 19---------------
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				 {'precision': {'support': 0.9078242229367631, 'agreement': 0.5297619047619048, 'direct_attack': 0.34146341463414637, 'undercutter_attack': 0.43037974683544306, 'partial': 0.32608695652173914}, 'recall': {'support': 0.9317931793179318, 'agreement': 0.4972067039106145, 'direct_attack': 0.20588235294117646, 'undercutter_attack': 0.6710526315789473, 'partial': 0.16666666666666666}, 'f1': {'support': 0.9196525515743758, 'agreement': 0.5129682997118156, 'direct_attack': 0.2568807339449541, 'undercutter_attack': 0.5244215938303343, 'partial': 0.22058823529411767}, 'support': {'support': 909, 'agreement': 179, 'direct_attack': 136, 'undercutter_attack': 152, 'partial': 90}, 'micro_avg': {'precision': 0.737380627557981, 'recall': 0.737380627557981, 'f1': 0.7373806275579811, 'support': None}, 'macro_avg': {'precision': 0.5071032491379993, 'recall': 0.4945203068830673, 'f1': 0.4869022828711195, 'support': None}, 'weighted_avg': {'precision': 0.7239046190982855, 'recall': 0.737380627557981, 'f1': 0.7246154831410079, 'support': None}}


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			------------EPOCH 1---------------
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				 {'precision': {'support': 0.0, 'agreement': 0.0, 'direct_attack': 0.0, 'undercutter_attack': 0.09801488833746898, 'partial': 0.0}, 'recall': {'support': 0.0, 'agreement': 0.0, 'direct_attack': 0.0, 'undercutter_attack': 1.0, 'partial': 0.0}, 'f1': {'support': 0.0, 'agreement': 0.0, 'direct_attack': 0.0, 'undercutter_attack': 0.17853107344632768, 'partial': 0.0}, 'support': {'support': 982, 'agreement': 230, 'direct_attack': 141, 'undercutter_attack': 158, 'partial': 101}, 'micro_avg': {'precision': 0.09801488833746898, 'recall': 0.09801488833746898, 'f1': 0.09801488833746898, 'support': None}, 'macro_avg': {'precision': 0.019602977667493797, 'recall': 0.2, 'f1': 0.035706214689265534, 'support': None}, 'weighted_avg': {'precision': 0.009606918335806514, 'recall': 0.09801488833746898, 'f1': 0.01749870322861028, 'support': None}}
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Loss: tensor(1.8019, device='cuda:0', grad_fn=<DivBackward0>)
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			------------EPOCH 11---------------
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			------------EPOCH 12---------------
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			------------EPOCH 14---------------
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Loss: tensor(0.0002, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 15---------------
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			------------EPOCH 18---------------
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			------------EPOCH 19---------------
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Loss: tensor(3.9755e-05, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 21---------------
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Loss: tensor(7.7749e-05, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 22---------------
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				 {'precision': {'support': 0.7256198347107438, 'agreement': 0.48201438848920863, 'direct_attack': 0.23076923076923078, 'undercutter_attack': 0.22535211267605634, 'partial': 0.29411764705882354}, 'recall': {'support': 0.8931841302136317, 'agreement': 0.29130434782608694, 'direct_attack': 0.17142857142857143, 'undercutter_attack': 0.20253164556962025, 'partial': 0.04950495049504951}, 'f1': {'support': 0.8007295941632466, 'agreement': 0.36314363143631434, 'direct_attack': 0.19672131147540986, 'undercutter_attack': 0.21333333333333335, 'partial': 0.08474576271186442}, 'support': {'support': 983, 'agreement': 230, 'direct_attack': 140, 'undercutter_attack': 158, 'partial': 101}, 'micro_avg': {'precision': 0.6240694789081885, 'recall': 0.6240694789081885, 'f1': 0.6240694789081885, 'support': None}, 'macro_avg': {'precision': 0.3915746427408126, 'recall': 0.321590729106592, 'f1': 0.3317347266240337, 'support': None}, 'weighted_avg': {'precision': 0.5718156422683806, 'recall': 0.6240694789081885, 'f1': 0.5834039693548053, 'support': None}}


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			------------EPOCH 1---------------
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				 {'precision': {'support': 0.0, 'agreement': 0.1561618062088429, 'direct_attack': 0.08391608391608392, 'undercutter_attack': 0.0, 'partial': 0.03546099290780142}, 'recall': {'support': 0.0, 'agreement': 0.8426395939086294, 'direct_attack': 0.21052631578947367, 'undercutter_attack': 0.0, 'partial': 0.043859649122807015}, 'f1': {'support': 0.0, 'agreement': 0.2634920634920635, 'direct_attack': 0.12000000000000002, 'undercutter_attack': 0.0, 'partial': 0.0392156862745098}, 'support': {'support': 865, 'agreement': 197, 'direct_attack': 114, 'undercutter_attack': 200, 'partial': 114}, 'micro_avg': {'precision': 0.13087248322147652, 'recall': 0.13087248322147652, 'f1': 0.13087248322147652, 'support': None}, 'macro_avg': {'precision': 0.055107776606545644, 'recall': 0.21940511176418198, 'f1': 0.08454154995331467, 'support': None}, 'weighted_avg': {'precision': 0.02978044468527851, 'recall': 0.13087248322147652, 'f1': 0.04701914412297358, 'support': None}}
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Loss: tensor(0.0022, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 6---------------
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Loss: tensor(0.0034, device='cuda:0', grad_fn=<DivBackward0>)
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				 {'precision': {'support': 0.7177664974619289, 'agreement': 0.46120689655172414, 'direct_attack': 0.18461538461538463, 'undercutter_attack': 0.3247863247863248, 'partial': 0.4230769230769231}, 'recall': {'support': 0.8173410404624277, 'agreement': 0.5431472081218274, 'direct_attack': 0.21052631578947367, 'undercutter_attack': 0.19, 'partial': 0.09649122807017543}, 'f1': {'support': 0.7643243243243243, 'agreement': 0.4988344988344988, 'direct_attack': 0.19672131147540983, 'undercutter_attack': 0.23974763406940064, 'partial': 0.1571428571428571}, 'support': {'support': 865, 'agreement': 197, 'direct_attack': 114, 'undercutter_attack': 200, 'partial': 114}, 'micro_avg': {'precision': 0.5953020134228187, 'recall': 0.5953020134228187, 'f1': 0.5953020134228187, 'support': None}, 'macro_avg': {'precision': 0.4222904052984571, 'recall': 0.37150115848878085, 'f1': 0.3713541251692981, 'support': None}, 'weighted_avg': {'precision': 0.5677583670868768, 'recall': 0.5953020134228187, 'f1': 0.5689268314411405, 'support': None}}
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Loss: tensor(8.1596e-05, device='cuda:0', grad_fn=<DivBackward0>)
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			------------EPOCH 13---------------
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Loss: tensor(0.0003, device='cuda:0', grad_fn=<DivBackward0>)
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Loss: tensor(0.0002, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 25---------------
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				 {'precision': {'support': 0.7170923379174853, 'agreement': 0.4857142857142857, 'direct_attack': 0.18604651162790697, 'undercutter_attack': 0.3394495412844037, 'partial': 0.4166666666666667}, 'recall': {'support': 0.8439306358381503, 'agreement': 0.5177664974619289, 'direct_attack': 0.21052631578947367, 'undercutter_attack': 0.185, 'partial': 0.08771929824561403}, 'f1': {'support': 0.7753584705257568, 'agreement': 0.5012285012285013, 'direct_attack': 0.19753086419753085, 'undercutter_attack': 0.2394822006472492, 'partial': 0.14492753623188404}, 'support': {'support': 865, 'agreement': 197, 'direct_attack': 114, 'undercutter_attack': 200, 'partial': 114}, 'micro_avg': {'precision': 0.6060402684563758, 'recall': 0.6060402684563758, 'f1': 0.6060402684563758, 'support': None}, 'macro_avg': {'precision': 0.4289938686421496, 'recall': 0.3689885494670334, 'f1': 0.3717055145661844, 'support': None}, 'weighted_avg': {'precision': 0.5721944947428196, 'recall': 0.6060402684563758, 'f1': 0.5747407983390587, 'support': None}}


		-------------RUN 5-----------
			------------EPOCH 1---------------
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				 {'precision': {'support': 0.8363417569193743, 'agreement': 0.47277227722772275, 'direct_attack': 0.16417910447761194, 'undercutter_attack': 0.33574007220216606, 'partial': 0.1927710843373494}, 'recall': {'support': 0.7135523613963038, 'agreement': 0.7100371747211895, 'direct_attack': 0.07432432432432433, 'undercutter_attack': 0.5705521472392638, 'partial': 0.14814814814814814}, 'f1': {'support': 0.7700831024930748, 'agreement': 0.5676077265973254, 'direct_attack': 0.10232558139534885, 'undercutter_attack': 0.4227272727272728, 'partial': 0.1675392670157068}, 'support': {'support': 974, 'agreement': 269, 'direct_attack': 148, 'undercutter_attack': 163, 'partial': 108}, 'micro_avg': {'precision': 0.605294825511432, 'recall': 0.605294825511432, 'f1': 0.605294825511432, 'support': None}, 'macro_avg': {'precision': 0.4003608590328449, 'recall': 0.44332283116584587, 'f1': 0.40605659004574574, 'support': None}, 'weighted_avg': {'precision': 0.6267244465426, 'recall': 0.605294825511432, 'f1': 0.6046271917098007, 'support': None}}
Loss: tensor(0.0264, device='cuda:0', grad_fn=<DivBackward0>)
Loss: tensor(0.0320, device='cuda:0', grad_fn=<DivBackward0>)
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			------------EPOCH 6---------------
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			------------EPOCH 7---------------
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Loss: tensor(0.0026, device='cuda:0', grad_fn=<DivBackward0>)
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Loss: tensor(0.0070, device='cuda:0', grad_fn=<DivBackward0>)
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Loss: tensor(0.0020, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 9---------------
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Loss: tensor(0.0050, device='cuda:0', grad_fn=<DivBackward0>)
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			------------EPOCH 12---------------
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Loss: tensor(0.0003, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 13---------------
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Loss: tensor(6.3128e-05, device='cuda:0', grad_fn=<DivBackward0>)
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Loss: tensor(0.0002, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 14---------------
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Loss: tensor(0.0023, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 15---------------
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Loss: tensor(0.0002, device='cuda:0', grad_fn=<DivBackward0>)
Loss: tensor(0.0011, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 16---------------
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Loss: tensor(7.0272e-05, device='cuda:0', grad_fn=<DivBackward0>)
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				 {'precision': {'support': 0.7479871175523349, 'agreement': 0.6867469879518072, 'direct_attack': 0.4, 'undercutter_attack': 0.43558282208588955, 'partial': 0.2682926829268293}, 'recall': {'support': 0.9537987679671458, 'agreement': 0.42379182156133827, 'direct_attack': 0.13513513513513514, 'undercutter_attack': 0.43558282208588955, 'partial': 0.10185185185185185}, 'f1': {'support': 0.8384476534296029, 'agreement': 0.5241379310344828, 'direct_attack': 0.202020202020202, 'undercutter_attack': 0.43558282208588955, 'partial': 0.1476510067114094}, 'support': {'support': 974, 'agreement': 269, 'direct_attack': 148, 'undercutter_attack': 163, 'partial': 108}, 'micro_avg': {'precision': 0.6889290012033694, 'recall': 0.6889290012033694, 'f1': 0.6889290012033694, 'support': None}, 'macro_avg': {'precision': 0.5077219221033722, 'recall': 0.41003207972027206, 'f1': 0.42956792305631736, 'support': None}, 'weighted_avg': {'precision': 0.6452767761799688, 'recall': 0.6889290012033694, 'f1': 0.6465020556633763, 'support': None}}
Loss: tensor(0.0006, device='cuda:0', grad_fn=<DivBackward0>)
Loss: tensor(0.0001, device='cuda:0', grad_fn=<DivBackward0>)
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Loss: tensor(6.6862e-05, device='cuda:0', grad_fn=<DivBackward0>)
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