Palpites de jogos de futebol apostas. Wimbledon transmissão.

palpites de jogos de futebol apostas

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MultilabelFBetaScore¶ The metric is only proper defined when \(\text + \text \neq 0 \wedge \text + \text \neq 0\) where \(\text\) , \(\text\) and \(\text\) represent the number of true positives, false positives and false negatives respectively. If this case is encountered for any label, the metric for that label will be set to 0 and the overall metric may therefore be affected in turn. mlfbs ( Tensor ): A tensor whose returned shape depends on the average and multidim_average arguments: >>> from torch import tensor >>> from torchmetrics.classification import MultilabelFBetaScore >>> target = tensor ([[ 0 , 1 , 0 ], [ 1 , 0 , 1 ]]) >>> preds = tensor ([[ 0 , 0 , 1 ], [ 1 , 0 , 1 ]]) >>> metric = MultilabelFBetaScore ( beta = 2.0 , num_labels = 3 ) >>> metric ( preds , target ) tensor(0.6111) >>> mlfbs = MultilabelFBetaScore ( beta = 2.0 , num_labels = 3 , average = None ) >>> mlfbs ( preds , target ) tensor([1.0000, 0.0000, 0.8333]) >>> from torchmetrics.classification import MultilabelFBetaScore >>> target = tensor ([[[ 0 , 1 ], [ 1 , 0 ], [ 0 , 1 ]], [[ 1 , 1 ], [ 0 , 0 ], [ 1 , 0 ]]]) >>> preds = tensor ([[[ 0.59 , 0.91 ], [ 0.91 , 0.99 ], [ 0.63 , 0.04 ]], . [[ 0.38 , 0.04 ], [ 0.86 , 0.780 ], [ 0.45 , 0.37 ]]]) >>> metric = MultilabelFBetaScore ( num_labels = 3 , beta = 2.0 , multidim_average = 'samplewise' ) >>> metric ( preds , target ) tensor([0.5556, 0.0000]) >>> mlfbs = MultilabelFBetaScore ( num_labels = 3 , beta = 2.0 , multidim_average = 'samplewise' , average = None ) >>> mlfbs ( preds , target ) tensor([[0.8333, 0.8333, 0.0000], [0.0000, 0.0000, 0.0000]]) Figure and Axes object. fbeta_score¶ This function is a simple wrapper to get the task specific versions of this metric, which is done by setting the task argument to either 'binary' , 'multiclass' or multilabel . See the documentation of binary_fbeta_score() , multiclass_fbeta_score() and multilabel_fbeta_score() for the specific details of each argument influence and examples. Compute F-score metric for binary tasks. If multidim_average is set to global , the metric returns a scalar value. If multidim_average is set to samplewise , the metric returns (N,) vector consisting of a scalar value per sample. >>> from torchmetrics.functional.classification import binary_fbeta_score >>> target = tensor ([ 0 , 1 , 0 , 1 , 0 , 1 ]) >>> preds = tensor ([ 0.11 , 0.22 , 0.84 , 0.73 , 0.33 , 0.92 ]) >>> binary_fbeta_score ( preds , target , beta = 2.0 ) tensor(0.6667) torchmetrics.functional.classification. Aposta jogo do bicho.Todas as estatísticas de futebol da APWin são gratuitas e tem como objetivo ajudar jornalistas, apostadores e fanáticos torcedores a enxergarem a partida pelo viés matemático.
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