nnpiv.diagnostics.relative_wellposedness_effective_sieve_from_data

nnpiv.diagnostics.relative_wellposedness_effective_sieve_from_data(data, *, e_g, A, B=None, C, C_prime, mask_s=None, mask_t=None, **kwargs)[source]

Run the sieve-path post-estimation kappa_eff diagnostic from selectors.

Parameters: data : DataFrame, mapping, or 2D array-like

Source container holding all blocks.

e_g

Selector for the first-stage error direction block.

A, C, C_prime

Selectors resolved and passed to relative_wellposedness_effective_sieve_diagnostic().

B

Optional selector accepted for interface consistency with (A, B, C, C') notation; ignored by this diagnostic.

mask_s, mask_tarray-like, str, or callable, optional

Optional subset selectors for stage-specific sample restrictions.

**kwargs

Forwarded to relative_wellposedness_effective_sieve_diagnostic().

Returns

Output dictionary returned by relative_wellposedness_effective_sieve_diagnostic().

Return type

dict

Notes

Selector semantics match relative_wellposedness_from_data().