Shortcuts

Source code for ignite.metrics.js_divergence

import torch
import torch.nn.functional as F
from packaging.version import Version

from ignite.exceptions import NotComputableError
from ignite.metrics.kl_divergence import KLDivergence
from ignite.metrics.metric import sync_all_reduce

__all__ = ["JSDivergence"]

TORCH_VERSION_GE_160 = Version(torch.__version__) >= Version("1.6.0")


[docs]class JSDivergence(KLDivergence): r"""Calculates the mean of `Jensen-Shannon (JS) divergence <https://en.wikipedia.org/wiki/Jensen%E2%80%93Shannon_divergence>`_. .. math:: \begin{align*} D_\text{JS}(\mathbf{p}_i \| \mathbf{q}_i) &= \frac{1}{2} D_\text{KL}(\mathbf{p}_i \| \mathbf{m}_i) + \frac{1}{2} D_\text{KL}(\mathbf{q}_i \| \mathbf{m}_i), \\ \mathbf{m}_i &= \frac{1}{2}(\mathbf{p}_i + \mathbf{q}_i), \\ D_\text{KL}(\mathbf{p}_i \| \mathbf{q}_i) &= \sum_{c=1}^C p_{i,c} \log \frac{p_{i,c}}{q_{i,c}}. \end{align*} where :math:`\mathbf{p}_i` and :math:`\mathbf{q}_i` are the ground truth and prediction probability tensors, and :math:`D_\text{KL}` is the KL-divergence. - ``update`` must receive output of the form ``(y_pred, y)``. - ``y_pred`` and ``y`` are expected to be the unnormalized logits for each class. :math:`(B, C)` (classification) or :math:`(B, C, ...)` (e.g., image segmentation) shapes are allowed. Args: output_transform: a callable that is used to transform the :class:`~ignite.engine.engine.Engine`'s ``process_function``'s output into the form expected by the metric. This can be useful if, for example, you have a multi-output model and you want to compute the metric with respect to one of the outputs. By default, metrics require the output as ``(y_pred, y)`` or ``{'y_pred': y_pred, 'y': y}``. device: specifies which device updates are accumulated on. Setting the metric's device to be the same as your ``update`` arguments ensures the ``update`` method is non-blocking. By default, CPU. Examples: To use with ``Engine`` and ``process_function``, simply attach the metric instance to the engine. The output of the engine's ``process_function`` needs to be in the format of ``(y_pred, y)`` or ``{'y_pred': y_pred, 'y': y, ...}``. If not, ``output_tranform`` can be added to the metric to transform the output into the form expected by the metric. For more information on how metric works with :class:`~ignite.engine.engine.Engine`, visit :ref:`attach-engine`. .. include:: defaults.rst :start-after: :orphan: .. testcode:: metric = JSDivergence() metric.attach(default_evaluator, 'js-div') y_true = torch.tensor([ [ 0.0000, -2.3026, -2.3026], [ 1.3863, 1.6094, 1.6094], [ 0.0000, 0.6931, 1.0986] ]) y_pred = torch.tensor([ [ 0.0000, 0.6931, 1.0986], [ 1.3863, 1.6094, 1.6094], [ 0.0000, -2.3026, -2.3026] ]) state = default_evaluator.run([[y_pred, y_true]]) print(state.metrics['js-div']) .. testoutput:: 0.16266516844431558 """ def _update(self, y_pred: torch.Tensor, y: torch.Tensor) -> None: y_pred_prob = F.softmax(y_pred, dim=1) y_prob = F.softmax(y, dim=1) m_prob = (y_pred_prob + y_prob) / 2 m_log = m_prob.log() if TORCH_VERSION_GE_160: # log_target option can be used from 1.6.0 y_pred_log = F.log_softmax(y_pred, dim=1) y_log = F.log_softmax(y, dim=1) self._sum_of_kl += ( F.kl_div(m_log, y_pred_log, log_target=True, reduction="sum") + F.kl_div(m_log, y_log, log_target=True, reduction="sum") ).to(self._device) else: # y_pred and y are expected to be probabilities self._sum_of_kl += ( F.kl_div(m_log, y_pred_prob, reduction="sum") + F.kl_div(m_log, y_prob, reduction="sum") ).to(self._device)
[docs] @sync_all_reduce("_sum_of_kl", "_num_examples") def compute(self) -> float: if self._num_examples == 0: raise NotComputableError("JSDivergence must have at least one example before it can be computed.") return self._sum_of_kl.item() / (self._num_examples * 2)

© Copyright 2024, PyTorch-Ignite Contributors. Last updated on 04/29/2024, 12:25:20 PM.

Built with Sphinx using a theme provided by Read the Docs.