causalis.data_contracts.causal_diagnostic_data¶
Module Contents¶
Classes¶
Base class for all diagnostic data_contracts. |
|
Fields common to all models assuming unconfoundedness. |
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Fields common to all models assuming unconfoundedness with multi_unconfoundedness. |
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Diagnostic data_contracts for Difference-in-Means model. |
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Diagnostic data_contracts for CUPED-style (Lin-interacted OLS) adjustment. |
API¶
- class causalis.data_contracts.causal_diagnostic_data.DiagnosticData(/, **data: Any)¶
Bases:
pydantic.BaseModelBase class for all diagnostic data_contracts.
Initialization
Create a new model by parsing and validating input data from keyword arguments.
Raises [
ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.selfis explicitly positional-only to allowselfas a field name.- model_config¶
‘ConfigDict(…)’
- class causalis.data_contracts.causal_diagnostic_data.UnconfoundednessDiagnosticData(/, **data: Any)¶
Bases:
causalis.data_contracts.causal_diagnostic_data.DiagnosticDataFields common to all models assuming unconfoundedness.
Initialization
Create a new model by parsing and validating input data from keyword arguments.
Raises [
ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.selfis explicitly positional-only to allowselfas a field name.- m_hat: numpy.ndarray¶
None
- m_hat_raw: Optional[numpy.ndarray]¶
None
- d: numpy.ndarray¶
None
- y: Optional[numpy.ndarray]¶
None
- x: Optional[numpy.ndarray]¶
None
- g0_hat: Optional[numpy.ndarray]¶
None
- g1_hat: Optional[numpy.ndarray]¶
None
- w: Optional[numpy.ndarray]¶
None
- w_bar: Optional[numpy.ndarray]¶
None
- psi_b: Optional[numpy.ndarray]¶
None
- folds: Optional[numpy.ndarray]¶
None
- trimming_threshold: float¶
0.0
- normalize_ipw: Optional[bool]¶
None
- sigma2: Optional[float]¶
None
- nu2: Optional[float]¶
None
- psi_sigma2: Optional[numpy.ndarray]¶
None
- psi_nu2: Optional[numpy.ndarray]¶
None
- riesz_rep: Optional[numpy.ndarray]¶
None
- m_alpha: Optional[numpy.ndarray]¶
None
- psi: Optional[numpy.ndarray]¶
None
- score: Optional[str]¶
None
- sensitivity_analysis: Optional[Dict[str, Any]]¶
None
- score_plot_cache: Optional[Dict[str, Any]]¶
None
- residual_plot_cache: Optional[Dict[str, Any]]¶
None
- class causalis.data_contracts.causal_diagnostic_data.MultiUnconfoundednessDiagnosticData(/, **data: Any)¶
Bases:
causalis.data_contracts.causal_diagnostic_data.DiagnosticDataFields common to all models assuming unconfoundedness with multi_unconfoundedness.
Initialization
Create a new model by parsing and validating input data from keyword arguments.
Raises [
ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.selfis explicitly positional-only to allowselfas a field name.- m_hat: numpy.ndarray¶
None
- m_hat_raw: Optional[numpy.ndarray]¶
None
- d: numpy.ndarray¶
None
- y: Optional[numpy.ndarray]¶
None
- x: Optional[numpy.ndarray]¶
None
- g_hat: Optional[numpy.ndarray]¶
None
- psi_b: Optional[numpy.ndarray]¶
None
- folds: Optional[numpy.ndarray]¶
None
- trimming_threshold: float¶
0.0
- normalize_ipw: Optional[bool]¶
None
- sigma2: Union[float, numpy.ndarray]¶
None
- nu2: Optional[numpy.ndarray]¶
None
- psi_sigma2: Optional[numpy.ndarray]¶
None
- psi_nu2: Optional[numpy.ndarray]¶
None
- riesz_rep: Optional[numpy.ndarray]¶
None
- m_alpha: Optional[numpy.ndarray]¶
None
- psi: Optional[numpy.ndarray]¶
None
- score: Optional[str]¶
None
- sensitivity_analysis: Optional[Dict[str, Any]]¶
None
- residual_plot_cache: Optional[Dict[str, Any]]¶
None
- class causalis.data_contracts.causal_diagnostic_data.DiffInMeansDiagnosticData(/, **data: Any)¶
Bases:
causalis.data_contracts.causal_diagnostic_data.DiagnosticDataDiagnostic data_contracts for Difference-in-Means model.
Initialization
Create a new model by parsing and validating input data from keyword arguments.
Raises [
ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.selfis explicitly positional-only to allowselfas a field name.
- class causalis.data_contracts.causal_diagnostic_data.CUPEDDiagnosticData(/, **data: Any)¶
Bases:
causalis.data_contracts.causal_diagnostic_data.DiagnosticDataDiagnostic data_contracts for CUPED-style (Lin-interacted OLS) adjustment.
Initialization
Create a new model by parsing and validating input data from keyword arguments.
Raises [
ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.selfis explicitly positional-only to allowselfas a field name.- ate_naive: float¶
None
- se_naive: float¶
None
- se_reduction_pct_same_cov: float¶
None
- r2_naive: float¶
None
- r2_adj: float¶
None
- beta_covariates: numpy.ndarray¶
None
- gamma_interactions: numpy.ndarray¶
None
- covariate_outcome_corr: Optional[numpy.ndarray]¶
None
- covariates: List[str]¶
None
- adj_type: str¶
None
- regression_checks: Optional[causalis.scenarios.cuped.diagnostics.regression_checks.RegressionChecks]¶
None