scoringrules.owes_ensemble#
- scoringrules.owes_ensemble(obs: Array, fct: Array, w_func: Callable[[ArrayLike], ArrayLike], m_axis: int = -2, v_axis: int = -1, *, ens_w: Array = None, backend: Backend = None) Array#
Compute the Outcome-Weighted Energy Score (owES) for a finite multivariate ensemble.
Computation is performed using the ensemble representation of the owES in [Allen et al. (2022)](https://arxiv.org/abs/2202.12732):
\[\mathrm{owES}(F_{ens}, \mathbf{y}) = \frac{1}{M \bar{w}} \sum_{m = 1}^{M} \| \mathbf{x}_{m} - \mathbf{y} \| w(\mathbf{x}_{m}) w(\mathbf{y}) - \frac{1}{2 M^{2} \bar{w}^{2}} \sum_{m = 1}^{M} \sum_{j = 1}^{M} \| \mathbf{x}_{m} - \mathbf{x}_{j} \| w(\mathbf{x}_{m}) w(\mathbf{x}_{j}) w(\mathbf{y}),\]where \(F_{ens}\) is the ensemble forecast \(\mathbf{x}_{1}, \dots, \mathbf{x}_{M}\) with \(M\) members, \(\| \cdotp \|\) is the Euclidean distance, \(w\) is the chosen weight function, and \(\bar{w} = \sum_{m=1}^{M}w(\mathbf{x}_{m})/M\).
- Parameters:
- obsarray_like
The observed values, where the variables dimension is by default the last axis.
- fctarray_like
The predicted forecast ensemble, where the ensemble dimension is by default represented by the second last axis and the variables dimension by the last axis.
- w_funccallable, array_like -> array_like
Weight function used to emphasise particular outcomes.
- m_axisint
The axis corresponding to the ensemble dimension. Defaults to -2.
- v_axisint or tuple of ints
The axis corresponding to the variables dimension. Defaults to -1.
- ens_warray_like
Weights assigned to the ensemble members. Array with one less dimension than fct (without the v_axis dimension). Default is equal weighting. Weights are normalised so that they sum to one across the ensemble members.
- backendstr
The name of the backend used for computations. Defaults to ‘numba’ if available, else ‘numpy’.
- Returns:
- owes_ensemblearray_like
The computed Outcome-Weighted Energy Score.