climpred.metrics._spearman_r_p_value

climpred.metrics._spearman_r_p_value(forecast: xarray.Dataset, verif: xarray.Dataset, dim: Optional[Union[str, List[str]]] = None, **metric_kwargs: Any) xarray.Dataset[source]

Probability that forecast and verification data are monotonically uncorrelated.

Two-tailed p value associated with the Spearman’s rank correlation coefficient _spearman_r(), assuming that all samples are independent. Use _spearman_r_eff_p_value() to account for autocorrelation in the forecast and verification data.

Parameters

Notes

minimum

0.0

maximum

1.0

perfect

1.0

orientation

negative

Example

>>> HindcastEnsemble.verify(
...     metric="spearman_r_p_value",
...     comparison="e2o",
...     alignment="same_verifs",
...     dim="init",
... )
<xarray.Dataset>
Dimensions:  (lead: 10)
Coordinates:
  * lead     (lead) int32 1 2 3 4 5 6 7 8 9 10
    skill    <U11 'initialized'
Data variables:
    SST      (lead) float64 6.248e-24 1.515e-23 ... 4.288e-24 8.254e-24
Attributes:
    prediction_skill_software:     climpred https://climpred.readthedocs.io/
    skill_calculated_by_function:  HindcastEnsemble.verify()
    number_of_initializations:     64
    number_of_members:             10
    alignment:                     same_verifs
    metric:                        spearman_r_p_value
    comparison:                    e2o
    dim:                           init
    reference:                     []