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Source code for ignite.contrib.metrics.regression.mean_absolute_relative_error

from typing import Tuple

import torch

from ignite.contrib.metrics.regression._base import _BaseRegression
from ignite.exceptions import NotComputableError


[docs]class MeanAbsoluteRelativeError(_BaseRegression): r"""Calculate Mean Absolute Relative Error. .. math:: \text{MARE} = \frac{1}{n}\sum_{j=1}^n\frac{\left|A_j-P_j\right|}{\left|A_j\right|} where :math:`A_j` is the ground truth and :math:`P_j` is the predicted value. More details can be found in the reference `Botchkarev 2018`__. - ``update`` must receive output of the form ``(y_pred, y)`` or ``{'y_pred': y_pred, 'y': y}``. - `y` and `y_pred` must be of same shape `(N, )` or `(N, 1)`. __ https://arxiv.org/ftp/arxiv/papers/1809/1809.03006.pdf """ def reset(self) -> None: self._sum_of_absolute_relative_errors = 0.0 self._num_samples = 0 def _update(self, output: Tuple[torch.Tensor, torch.Tensor]) -> None: y_pred, y = output if (y == 0).any(): raise NotComputableError("The ground truth has 0.") absolute_error = torch.abs(y_pred - y.view_as(y_pred)) / torch.abs(y.view_as(y_pred)) self._sum_of_absolute_relative_errors += torch.sum(absolute_error).item() self._num_samples += y.size()[0] def compute(self) -> float: if self._num_samples == 0: raise NotComputableError( "MeanAbsoluteRelativeError must have at least one sample before it can be computed." ) return self._sum_of_absolute_relative_errors / self._num_samples

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