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ededed dee defddZdededefddZ			dd	ed
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ddZdS )    N)Optional)Tensor)Literal)#_multiclass_confusion_matrix_update)_compute_bias_corrected_values_compute_chi_squared_drop_empty_rows_and_cols_handle_nan_in_data_nominal_input_validation&_unable_to_use_bias_correction_warningreplace        predstargetnum_classesnan_strategy)r   dropnan_replace_valuereturnc                 C   sN   | j dkr
| dn| } |j dkr|dn|}t| |||\} }t| ||S )a  Compute the bins to update the confusion matrix with for Cramer's V calculation.

    Args:
        preds: 1D or 2D tensor of categorical (nominal) data
        target: 1D or 2D tensor of categorical (nominal) data
        num_classes: Integer specifying the number of classes
        nan_strategy: Indication of whether to replace or drop ``NaN`` values
        nan_replace_value: Value to replace ``NaN`s when ``nan_strategy = 'replace```

    Returns:
        Non-reduced confusion matrix

          )ndimargmaxr	   r   )r   r   r   r   r    r   d/home/ubuntu/sommelier/.venv/lib/python3.10/site-packages/torchmetrics/functional/nominal/cramers.py_cramers_v_update    s   r   confmatbias_correctionc                 C   s   t | } |  }t| |}|| }| j\}}|rIt||||\}}}	t||	dkr9tdd tjt	d| j
dS t|t|d |	d  }
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ddS )zCompute Cramers' V statistic based on a pre-computed confusion matrix.

    Args:
        confmat: Confusion matrix for observed data
        bias_correction: Indication of whether to use bias correction.

    Returns:
        Cramer's V statistic

    r   z
Cramer's V)metric_namenandevicer   g      ?)r   sumr   shaper   torchminr   tensorfloatr!   sqrtclamp)r   r   cm_sumchi_squaredphi_squarednum_rowsnum_colsphi_squared_correctedrows_correctedcols_correctedcramers_v_valuer   r   r   _cramers_v_compute:   s   



 r3   Tc                 C   s:   t || tt| |g }t| ||||}t||S )a   Compute `Cramer's V`_ statistic measuring the association between two categorical (nominal) data series.

    .. math::
        V = \sqrt{\frac{\chi^2 / n}{\min(r - 1, k - 1)}}

    where

    .. math::
        \chi^2 = \sum_{i,j} \ frac{\left(n_{ij} - \frac{n_{i.} n_{.j}}{n}\right)^2}{\frac{n_{i.} n_{.j}}{n}}

    where :math:`n_{ij}` denotes the number of times the values :math:`(A_i, B_j)` are observed with :math:`A_i, B_j`
    represent frequencies of values in ``preds`` and ``target``, respectively.

    Cramer's V is a symmetric coefficient, i.e. :math:`V(preds, target) = V(target, preds)`.

    The output values lies in [0, 1] with 1 meaning the perfect association.

    Args:
        preds: 1D or 2D tensor of categorical (nominal) data
            - 1D shape: (batch_size,)
            - 2D shape: (batch_size, num_classes)
        target: 1D or 2D tensor of categorical (nominal) data
            - 1D shape: (batch_size,)
            - 2D shape: (batch_size, num_classes)
        bias_correction: Indication of whether to use bias correction.
        nan_strategy: Indication of whether to replace or drop ``NaN`` values
        nan_replace_value: Value to replace ``NaN``s when ``nan_strategy = 'replace'``

    Returns:
        Cramer's V statistic

    Example:
        >>> from torch import randint, round
        >>> from torchmetrics.functional.nominal import cramers_v
        >>> preds = randint(0, 4, (100,))
        >>> target = round(preds + torch.randn(100)).clamp(0, 4)
        >>> cramers_v(preds, target)
        tensor(0.5284)

    )r
   lenr$   catuniquer   r3   )r   r   r   r   r   r   r   r   r   r   	cramers_vX   s   
/
r7   matrixc                 C   s   t || | jd }tj||| jd}tt|dD ]7\}}| dd|f | dd|f }}	tt	||	g
 }
t||	|
||}t|| |||f< |||f< q|S )a  Compute `Cramer's V`_ statistic between a set of multiple variables.

    This can serve as a convenient tool to compute Cramer's V statistic for analyses of correlation between categorical
    variables in your dataset.

    Args:
        matrix: A tensor of categorical (nominal) data, where:
            - rows represent a number of data points
            - columns represent a number of categorical (nominal) features
        bias_correction: Indication of whether to use bias correction.
        nan_strategy: Indication of whether to replace or drop ``NaN`` values
        nan_replace_value: Value to replace ``NaN``s when ``nan_strategy = 'replace'``

    Returns:
        Cramer's V statistic for a dataset of categorical variables

    Example:
        >>> from torch import randint
        >>> from torchmetrics.functional.nominal import cramers_v_matrix
        >>> matrix = randint(0, 4, (200, 5))
        >>> cramers_v_matrix(matrix)
        tensor([[1.0000, 0.0637, 0.0000, 0.0542, 0.1337],
                [0.0637, 1.0000, 0.0000, 0.0000, 0.0000],
                [0.0000, 0.0000, 1.0000, 0.0000, 0.0649],
                [0.0542, 0.0000, 0.0000, 1.0000, 0.1100],
                [0.1337, 0.0000, 0.0649, 0.1100, 1.0000]])

    r   r    r   N)r
   r#   r$   onesr!   	itertoolscombinationsranger4   r5   r6   r   r3   )r8   r   r   r   num_variablescramers_v_matrix_valueijxyr   r   r   r   r   cramers_v_matrix   s   
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" rC   )r   r   )Tr   r   )r:   typingr   r$   r   typing_extensionsr   7torchmetrics.functional.classification.confusion_matrixr   %torchmetrics.functional.nominal.utilsr   r   r   r	   r
   r   intr'   r   boolr3   r7   rC   r   r   r   r   <module>   sj    
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