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mZmZmZmZmZmZmZmZ d dlmZmZ d dlmZ 		d.d	ed
edededeed  ded dedefddZ				d/dedededed dee dedefddZ		 			d0deded!edeed"  d#eded dee dedefd$d%Z					d1deded&ededeed"  ded dee dedefd'd(Z				)		 		d2deded*ed+ ded!ee d&ee deed"  deed  d#ee dee dedefd,d-ZdS )3    )Optional)Tensor)Literal)"_binary_stat_scores_arg_validation_binary_stat_scores_format%_binary_stat_scores_tensor_validation_binary_stat_scores_update&_multiclass_stat_scores_arg_validation_multiclass_stat_scores_format)_multiclass_stat_scores_tensor_validation_multiclass_stat_scores_update&_multilabel_stat_scores_arg_validation_multilabel_stat_scores_format)_multilabel_stat_scores_tensor_validation_multilabel_stat_scores_update)_adjust_weights_safe_divide_safe_divide)ClassificationTaskglobalFtpfptnfnaverage)binarymicromacroweightednonemultidim_average)r   
samplewise
multilabelreturnc                 C   s|   |dkrt ||| S |dkr.|j|dkrdndd}|j|dkr#dndd}t ||| S t ||| }t|||| ||S )Nr   r   r   r      )dim)r   sumr   )r   r   r   r   r   r   r!   specificity_score r'   o/home/ubuntu/sommelier/.venv/lib/python3.10/site-packages/torchmetrics/functional/classification/specificity.py_specificity_reduce%   s   	r)         ?NTpredstarget	thresholdignore_indexvalidate_argsc           
      C   sX   |rt ||| t| ||| t| |||\} }t| ||\}}}}	t||||	d|dS )a  Compute `Specificity`_ for binary tasks.

    .. math:: \text{Specificity} = \frac{\text{TN}}{\text{TN} + \text{FP}}

    Where :math:`\text{TN}` and :math:`\text{FP}` represent the number of true negatives and
    false positives respecitively.

    Accepts the following input tensors:

    - ``preds`` (int or float tensor): ``(N, ...)``. If preds is a floating point tensor with values outside
      [0,1] range we consider the input to be logits and will auto apply sigmoid per element. Additionally,
      we convert to int tensor with thresholding using the value in ``threshold``.
    - ``target`` (int tensor): ``(N, ...)``

    Args:
        preds: Tensor with predictions
        target: Tensor with true labels
        threshold: Threshold for transforming probability to binary {0,1} predictions
        multidim_average:
            Defines how additionally dimensions ``...`` should be handled. Should be one of the following:

            - ``global``: Additional dimensions are flatted along the batch dimension
            - ``samplewise``: Statistic will be calculated independently for each sample on the ``N`` axis.
              The statistics in this case are calculated over the additional dimensions.

        ignore_index:
            Specifies a target value that is ignored and does not contribute to the metric calculation
        validate_args: bool indicating if input arguments and tensors should be validated for correctness.
            Set to ``False`` for faster computations.

    Returns:
        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.

    Example (preds is int tensor):
        >>> from torch import tensor
        >>> from torchmetrics.functional.classification import binary_specificity
        >>> target = tensor([0, 1, 0, 1, 0, 1])
        >>> preds = tensor([0, 0, 1, 1, 0, 1])
        >>> binary_specificity(preds, target)
        tensor(0.6667)

    Example (preds is float tensor):
        >>> from torchmetrics.functional.classification import binary_specificity
        >>> target = tensor([0, 1, 0, 1, 0, 1])
        >>> preds = tensor([0.11, 0.22, 0.84, 0.73, 0.33, 0.92])
        >>> binary_specificity(preds, target)
        tensor(0.6667)

    Example (multidim tensors):
        >>> from torchmetrics.functional.classification import binary_specificity
        >>> 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]]])
        >>> binary_specificity(preds, target, multidim_average='samplewise')
        tensor([0.0000, 0.3333])

    r   r   r   )r   r   r   r   r)   )
r+   r,   r-   r   r.   r/   r   r   r   r   r'   r'   r(   binary_specificity9   s   Br1   r   r#   num_classes)r   r   r   r   top_kc                 C   sd   |rt ||||| t| |||| t| ||\} }t| ||||||\}}	}
}t||	|
|||dS )a  Compute `Specificity`_ for multiclass tasks.

    .. math:: \text{Specificity} = \frac{\text{TN}}{\text{TN} + \text{FP}}

    Where :math:`\text{TN}` and :math:`\text{FP}` represent the number of true negatives and
    false positives respecitively.

    Accepts the following input tensors:

    - ``preds``: ``(N, ...)`` (int tensor) or ``(N, C, ..)`` (float tensor). If preds is a floating point
      we apply ``torch.argmax`` along the ``C`` dimension to automatically convert probabilities/logits into
      an int tensor.
    - ``target`` (int tensor): ``(N, ...)``

    Args:
        preds: Tensor with predictions
        target: Tensor with true labels
        num_classes: Integer specifying the number of classes
        average:
            Defines the reduction that is applied over labels. Should be one of the following:

            - ``micro``: Sum statistics over all labels
            - ``macro``: Calculate statistics for each label and average them
            - ``weighted``: calculates statistics for each label and computes weighted average using their support
            - ``"none"`` or ``None``: calculates statistic for each label and applies no reduction

        top_k:
            Number of highest probability or logit score predictions considered to find the correct label.
            Only works when ``preds`` contain probabilities/logits.
        multidim_average:
            Defines how additionally dimensions ``...`` should be handled. Should be one of the following:

            - ``global``: Additional dimensions are flatted along the batch dimension
            - ``samplewise``: Statistic will be calculated independently for each sample on the ``N`` axis.
              The statistics in this case are calculated over the additional dimensions.

        ignore_index:
            Specifies a target value that is ignored and does not contribute to the metric calculation
        validate_args: bool indicating if input arguments and tensors should be validated for correctness.
            Set to ``False`` for faster computations.

    Returns:
        The returned shape depends on the ``average`` and ``multidim_average`` arguments:

        - If ``multidim_average`` is set to ``global``:

          - If ``average='micro'/'macro'/'weighted'``, the output will be a scalar tensor
          - If ``average=None/'none'``, the shape will be ``(C,)``

        - If ``multidim_average`` is set to ``samplewise``:

          - If ``average='micro'/'macro'/'weighted'``, the shape will be ``(N,)``
          - If ``average=None/'none'``, the shape will be ``(N, C)``

    Example (preds is int tensor):
        >>> from torch import tensor
        >>> from torchmetrics.functional.classification import multiclass_specificity
        >>> target = tensor([2, 1, 0, 0])
        >>> preds = tensor([2, 1, 0, 1])
        >>> multiclass_specificity(preds, target, num_classes=3)
        tensor(0.8889)
        >>> multiclass_specificity(preds, target, num_classes=3, average=None)
        tensor([1.0000, 0.6667, 1.0000])

    Example (preds is float tensor):
        >>> from torchmetrics.functional.classification import multiclass_specificity
        >>> target = tensor([2, 1, 0, 0])
        >>> preds = tensor([[0.16, 0.26, 0.58],
        ...                 [0.22, 0.61, 0.17],
        ...                 [0.71, 0.09, 0.20],
        ...                 [0.05, 0.82, 0.13]])
        >>> multiclass_specificity(preds, target, num_classes=3)
        tensor(0.8889)
        >>> multiclass_specificity(preds, target, num_classes=3, average=None)
        tensor([1.0000, 0.6667, 1.0000])

    Example (multidim tensors):
        >>> from torchmetrics.functional.classification import multiclass_specificity
        >>> target = tensor([[[0, 1], [2, 1], [0, 2]], [[1, 1], [2, 0], [1, 2]]])
        >>> preds = tensor([[[0, 2], [2, 0], [0, 1]], [[2, 2], [2, 1], [1, 0]]])
        >>> multiclass_specificity(preds, target, num_classes=3, multidim_average='samplewise')
        tensor([0.7500, 0.6556])
        >>> multiclass_specificity(preds, target, num_classes=3, multidim_average='samplewise', average=None)
        tensor([[0.7500, 0.7500, 0.7500],
                [0.8000, 0.6667, 0.5000]])

    r0   )r	   r   r
   r   r)   )r+   r,   r2   r   r3   r   r.   r/   r   r   r   r   r'   r'   r(   multiclass_specificity   s   ar4   
num_labelsc              	   C   sb   |rt ||||| t| |||| t| ||||\} }t| ||\}}	}
}t||	|
|||ddS )a  Compute `Specificity`_ for multilabel tasks.

    .. math:: \text{Specificity} = \frac{\text{TN}}{\text{TN} + \text{FP}}

    Where :math:`\text{TN}` and :math:`\text{FP}` represent the number of true negatives and
    false positives respecitively.

    Accepts the following input tensors:

    - ``preds`` (int or float tensor): ``(N, C, ...)``. If preds is a floating point tensor with values outside
      [0,1] range we consider the input to be logits and will auto apply sigmoid per element. Additionally,
      we convert to int tensor with thresholding using the value in ``threshold``.
    - ``target`` (int tensor): ``(N, C, ...)``

    Args:
        preds: Tensor with predictions
        target: Tensor with true labels
        num_labels: Integer specifying the number of labels
        threshold: Threshold for transforming probability to binary (0,1) predictions
        average:
            Defines the reduction that is applied over labels. Should be one of the following:

            - ``micro``: Sum statistics over all labels
            - ``macro``: Calculate statistics for each label and average them
            - ``weighted``: calculates statistics for each label and computes weighted average using their support
            - ``"none"`` or ``None``: calculates statistic for each label and applies no reduction

        multidim_average:
            Defines how additionally dimensions ``...`` should be handled. Should be one of the following:

            - ``global``: Additional dimensions are flatted along the batch dimension
            - ``samplewise``: Statistic will be calculated independently for each sample on the ``N`` axis.
              The statistics in this case are calculated over the additional dimensions.

        ignore_index:
            Specifies a target value that is ignored and does not contribute to the metric calculation
        validate_args: bool indicating if input arguments and tensors should be validated for correctness.
            Set to ``False`` for faster computations.

    Returns:
        The returned shape depends on the ``average`` and ``multidim_average`` arguments:

        - If ``multidim_average`` is set to ``global``:

          - If ``average='micro'/'macro'/'weighted'``, the output will be a scalar tensor
          - If ``average=None/'none'``, the shape will be ``(C,)``

        - If ``multidim_average`` is set to ``samplewise``:

          - If ``average='micro'/'macro'/'weighted'``, the shape will be ``(N,)``
          - If ``average=None/'none'``, the shape will be ``(N, C)``

    Example (preds is int tensor):
        >>> from torch import tensor
        >>> from torchmetrics.functional.classification import multilabel_specificity
        >>> target = tensor([[0, 1, 0], [1, 0, 1]])
        >>> preds = tensor([[0, 0, 1], [1, 0, 1]])
        >>> multilabel_specificity(preds, target, num_labels=3)
        tensor(0.6667)
        >>> multilabel_specificity(preds, target, num_labels=3, average=None)
        tensor([1., 1., 0.])

    Example (preds is float tensor):
        >>> from torchmetrics.functional.classification import multilabel_specificity
        >>> target = tensor([[0, 1, 0], [1, 0, 1]])
        >>> preds = tensor([[0.11, 0.22, 0.84], [0.73, 0.33, 0.92]])
        >>> multilabel_specificity(preds, target, num_labels=3)
        tensor(0.6667)
        >>> multilabel_specificity(preds, target, num_labels=3, average=None)
        tensor([1., 1., 0.])

    Example (multidim tensors):
        >>> from torchmetrics.functional.classification import multilabel_specificity
        >>> 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]]])
        >>> multilabel_specificity(preds, target, num_labels=3, multidim_average='samplewise')
        tensor([0.0000, 0.3333])
        >>> multilabel_specificity(preds, target, num_labels=3, multidim_average='samplewise', average=None)
        tensor([[0., 0., 0.],
                [0., 0., 1.]])

    T)r   r   r!   )r   r   r   r   r)   )r+   r,   r5   r-   r   r   r.   r/   r   r   r   r   r'   r'   r(   multilabel_specificity   s   ]r6   r   task)r   
multiclassr!   c              	   C   s   t |}|dusJ |t jkrt| ||||	|
S |t jkrGt|ts-tdt| dt|ts<tdt| dt	| ||||||	|
S |t j
krft|ts[tdt| dt| ||||||	|
S td| )ad  Compute `Specificity`_.

    .. math:: \text{Specificity} = \frac{\text{TN}}{\text{TN} + \text{FP}}

    Where :math:`\text{TN}` and :math:`\text{FP}` represent the number of true negatives and
    false positives respecitively.

    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
    :func:`~torchmetrics.functional.classification.binary_specificity`,
    :func:`~torchmetrics.functional.classification.multiclass_specificity` and
    :func:`~torchmetrics.functional.classification.multilabel_specificity` for the specific
    details of each argument influence and examples.

    LegacyExample:
        >>> from torch import tensor
        >>> preds  = tensor([2, 0, 2, 1])
        >>> target = tensor([1, 1, 2, 0])
        >>> specificity(preds, target, task="multiclass", average='macro', num_classes=3)
        tensor(0.6111)
        >>> specificity(preds, target, task="multiclass", average='micro', num_classes=3)
        tensor(0.6250)

    Nz+`num_classes` is expected to be `int` but `z was passed.`z%`top_k` is expected to be `int` but `z*`num_labels` is expected to be `int` but `zNot handled value: )r   from_strBINARYr1   
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isinstanceint
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MULTILABELr6   )r+   r,   r7   r-   r2   r5   r   r   r3   r.   r/   r'   r'   r(   specificityS  s&   
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rA   )r   F)r*   r   NT)r   r#   r   NT)r*   r   r   NT)r*   NNr   r   r#   NT) typingr   torchr   typing_extensionsr   2torchmetrics.functional.classification.stat_scoresr   r   r   r   r	   r
   r   r   r   r   r   r   torchmetrics.utilities.computer   r   torchmetrics.utilities.enumsr   boolr)   floatr=   r1   r4   r6   rA   r'   r'   r'   r(   <module>   s   8	
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