# Copyright The Lightning team. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import torch from torch import Tensor from typing_extensions import Literal def _fleiss_kappa_update(ratings: Tensor, mode: Literal["counts", "probs"] = "counts") -> Tensor: """Updates the counts for fleiss kappa metric. Args: ratings: ratings matrix mode: whether ratings are provided as counts or probabilities """ if mode == "probs": if ratings.ndim != 3 or not ratings.is_floating_point(): raise ValueError( "If argument ``mode`` is 'probs', ratings must have 3 dimensions with the format" " [n_samples, n_categories, n_raters] and be floating point." ) ratings = ratings.argmax(dim=1) one_hot = torch.nn.functional.one_hot(ratings, num_classes=ratings.shape[1]).permute(0, 2, 1) ratings = one_hot.sum(dim=-1) elif mode == "counts" and (ratings.ndim != 2 or ratings.is_floating_point()): raise ValueError( "If argument ``mode`` is `counts`, ratings must have 2 dimensions with the format" " [n_samples, n_categories] and be none floating point." ) return ratings def _fleiss_kappa_compute(counts: Tensor) -> Tensor: """Computes fleiss kappa from counts matrix. Args: counts: counts matrix of shape [n_samples, n_categories] """ total = counts.shape[0] num_raters = counts.sum(1).max() p_i = counts.sum(dim=0) / (total * num_raters) p_j = ((counts**2).sum(dim=1) - num_raters) / (num_raters * (num_raters - 1)) p_bar = p_j.mean() pe_bar = (p_i**2).sum() return (p_bar - pe_bar) / (1 - pe_bar + 1e-5) def fleiss_kappa(ratings: Tensor, mode: Literal["counts", "probs"] = "counts") -> Tensor: r"""Calculatees `Fleiss kappa`_ a statistical measure for inter agreement between raters. .. math:: \kappa = \frac{\bar{p} - \bar{p_e}}{1 - \bar{p_e}} where :math:`\bar{p}` is the mean of the agreement probability over all raters and :math:`\bar{p_e}` is the mean agreement probability over all raters if they were randomly assigned. If the raters are in complete agreement then the score 1 is returned, if there is no agreement among the raters (other than what would be expected by chance) then a score smaller than 0 is returned. Args: ratings: Ratings of shape [n_samples, n_categories] or [n_samples, n_categories, n_raters] depedenent on `mode`. If `mode` is `counts`, `ratings` must be integer and contain the number of raters that chose each category. If `mode` is `probs`, `ratings` must be floating point and contain the probability/logits that each rater chose each category. mode: Whether `ratings` will be provided as counts or probabilities. Example: >>> # Ratings are provided as counts >>> from torch import randint >>> from torchmetrics.functional.nominal import fleiss_kappa >>> ratings = randint(0, 10, size=(100, 5)).long() # 100 samples, 5 categories, 10 raters >>> fleiss_kappa(ratings) tensor(0.0089) Example: >>> # Ratings are provided as probabilities >>> from torch import randn >>> from torchmetrics.functional.nominal import fleiss_kappa >>> ratings = randn(100, 5, 10).softmax(dim=1) # 100 samples, 5 categories, 10 raters >>> fleiss_kappa(ratings, mode='probs') tensor(-0.0075) """ if mode not in ["counts", "probs"]: raise ValueError("Argument ``mode`` must be one of ['counts', 'probs'].") counts = _fleiss_kappa_update(ratings, mode) return _fleiss_kappa_compute(counts)