Tokenizer: ../home/arg_mining/4epoch_complete/tokenizer Model: ../home/arg_mining/4epoch_complete/model/
Train size: xx
	Train size: 50 Test size: 50


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			------------EPOCH 1---------------
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Loss: tensor(0.0358, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 11---------------
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Loss: tensor(0.0011, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 12---------------
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			------------EPOCH 13---------------
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			------------EPOCH 17---------------
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Loss: tensor(0.0002, device='cuda:0', grad_fn=<DivBackward0>)
			------------EPOCH 19---------------
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				 {'precision': {'support': 0.8661670235546038, 'agreement': 0.6756756756756757, 'direct_attack': 0.29545454545454547, 'undercutter_attack': 0.44642857142857145, 'partial': 0.24242424242424243}, 'recall': {'support': 0.9528857479387515, 'agreement': 0.39893617021276595, 'direct_attack': 0.21487603305785125, 'undercutter_attack': 0.6535947712418301, 'partial': 0.10126582278481013}, 'f1': {'support': 0.9074593381940549, 'agreement': 0.5016722408026757, 'direct_attack': 0.24880382775119617, 'undercutter_attack': 0.5305039787798408, 'partial': 0.14285714285714285}, 'support': {'support': 849, 'agreement': 188, 'direct_attack': 121, 'undercutter_attack': 153, 'partial': 79}, 'micro_avg': {'precision': 0.7323741007194244, 'recall': 0.7323741007194244, 'f1': 0.7323741007194244, 'support': None}, 'macro_avg': {'precision': 0.5052300117075278, 'recall': 0.46431170904720176, 'f1': 0.46625930567698204, 'support': None}, 'weighted_avg': {'precision': 0.7090704436006994, 'recall': 0.7323741007194244, 'f1': 0.7102916874781153, 'support': None}}
