dowhy package

Subpackages

Submodules

dowhy.causal_estimator module

class dowhy.causal_estimator.CausalEstimate(estimate, target_estimand, realized_estimand_expr, control_value, treatment_value, conditional_estimates=None, **kwargs)[source]

Bases: object

Class for the estimate object that every causal estimator returns

add_effect_strength(strength_dict)[source]
add_estimator(estimator_instance)[source]
add_params(**kwargs)[source]
estimate_conditional_effects(effect_modifiers=None, num_quantiles=5)[source]

Estimate treatment effect conditioned on given variables.

If a numeric effect modifier is provided, it is discretized into quantile bins. If you would like a custom discretization, you can do so yourself: create a new column containing the discretized effect modifier and then include that column’s name in the effect_modifier_names argument.

Parameters
  • effect_modifiers – Names of effect modifier variables over which the conditional effects will be estimated. If not provided, defaults to the effect modifiers specified during creation of the CausalEstimator object.

  • num_quantiles – The number of quantiles into which a numeric effect modifier variable is discretized. Does not affect any categorical effect modifiers.

Returns

A (multi-index) dataframe that provides separate effects for each value of the (discretized) effect modifiers.

get_confidence_intervals(confidence_level=None, method=None, **kwargs)[source]

Get confidence intervals of the obtained estimate.

By default, this is done with the help of bootstrapped confidence intervals but can be overridden if the specific estimator implements other methods of estimating confidence intervals.

If the method provided is not bootstrap, this function calls the implementation of the specific estimator.

Parameters
  • method – Method for estimating confidence intervals.

  • confidence_level – The confidence level of the confidence intervals of the estimate.

  • kwargs – Other optional args to be passed to the CI method.

Returns

The obtained confidence interval.

get_standard_error(method=None, **kwargs)[source]

Get standard error of the obtained estimate.

By default, this is done with the help of bootstrapped standard errors but can be overridden if the specific estimator implements other methods of estimating standard error.

If the method provided is not bootstrap, this function calls the implementation of the specific estimator.

Parameters
  • method – Method for computing the standard error.

  • kwargs – Other optional parameters to be passed to the estimating method.

Returns

Standard error of the causal estimate.

interpret(method_name=None, **kwargs)[source]

Interpret the causal estimate.

Parameters
  • method_name – Method used (string) or a list of methods. If None, then the default for the specific estimator is used.

  • kwargs: – Optional parameters that are directly passed to the interpreter method.

Returns

None

test_stat_significance(method=None, **kwargs)[source]

Test statistical significance of the estimate obtained.

By default, uses resampling to create a non-parametric significance test. Individual child estimators can implement different methods. If the method name is different from “bootstrap”, this function calls the implementation of the child estimator.

Parameters
  • method – Method for checking statistical significance

  • kwargs – Other optional parameters to be passed to the estimating method.

Returns

p-value from the significance test

class dowhy.causal_estimator.CausalEstimator(data, identified_estimand, treatment, outcome, control_value=0, treatment_value=1, test_significance=False, evaluate_effect_strength=False, confidence_intervals=False, target_units=None, effect_modifiers=None, params=None)[source]

Bases: object

Base class for an estimator of causal effect.

Subclasses implement different estimation methods. All estimation methods are in the package “dowhy.causal_estimators”

Initializes an estimator with data and names of relevant variables.

This method is called from the constructors of its child classes.

Parameters
  • data – data frame containing the data

  • identified_estimand – probability expression representing the target identified estimand to estimate.

  • treatment – name of the treatment variable

  • outcome – name of the outcome variable

  • control_value – Value of the treatment in the control group, for effect estimation. If treatment is multi-variate, this can be a list.

  • treatment_value – Value of the treatment in the treated group, for effect estimation. If treatment is multi-variate, this can be a list.

  • test_significance – Binary flag or a string indicating whether to test significance and by which method. All estimators support test_significance=”bootstrap” that estimates a p-value for the obtained estimate using the bootstrap method. Individual estimators can override this to support custom testing methods. The bootstrap method supports an optional parameter, num_null_simulations that can be specified through the params dictionary. If False, no testing is done. If True, significance of the estimate is tested using the custom method if available, otherwise by bootstrap.

  • evaluate_effect_strength – (Experimental) whether to evaluate the strength of effect

  • confidence_intervals – Binary flag or a string indicating whether the confidence intervals should be computed and which method should be used. All methods support estimation of confidence intervals using the bootstrap method by using the parameter confidence_intervals=”bootstrap”. The bootstrap method takes in two arguments (num_simulations and sample_size_fraction) that can be optionally specified in the params dictionary. Estimators may also override this to implement their own confidence interval method. If this parameter is False, no confidence intervals are computed. If True, confidence intervals are computed by the estimator’s specific method if available, otherwise through bootstrap.

  • target_units – The units for which the treatment effect should be estimated. This can be a string for common specifications of target units (namely, “ate”, “att” and “atc”). It can also be a lambda function that can be used as an index for the data (pandas DataFrame). Alternatively, it can be a new DataFrame that contains values of the effect_modifiers and effect will be estimated only for this new data.

  • effect_modifiers – Variables on which to compute separate effects, or return a heterogeneous effect function. Not all methods support this currently.

  • params – (optional) Additional method parameters num_null_simulations: The number of simulations for testing the statistical significance of the estimator num_simulations: The number of simulations for finding the confidence interval (and/or standard error) for a estimate sample_size_fraction: The size of the sample for the bootstrap estimator confidence_level: The confidence level of the confidence interval estimate num_quantiles_to_discretize_cont_cols: The number of quantiles into which a numeric effect modifier is split, to enable estimation of conditional treatment effect over it.

Returns

an instance of the estimator class.

class BootstrapEstimates(estimates, params)

Bases: tuple

Create new instance of BootstrapEstimates(estimates, params)

estimates

Alias for field number 0

params

Alias for field number 1

DEFAULT_CONFIDENCE_LEVEL = 0.95
DEFAULT_INTERPRET_METHOD = ['textual_effect_interpreter']
DEFAULT_NOTIMPLEMENTEDERROR_MSG = 'not yet implemented for {0}. If you would this to be implemented in the next version, please raise an issue at https://github.com/microsoft/dowhy/issues'
DEFAULT_NUMBER_OF_SIMULATIONS_CI = 100
DEFAULT_NUMBER_OF_SIMULATIONS_STAT_TEST = 1000
DEFAULT_SAMPLE_SIZE_FRACTION = 1
NUM_QUANTILES_TO_DISCRETIZE_CONT_COLS = 5
TEMP_CAT_COLUMN_PREFIX = '__categorical__'
construct_symbolic_estimator(estimand)[source]
do(x, data_df=None)[source]

Method that implements the do-operator.

Given a value x for the treatment, returns the expected value of the outcome when the treatment is intervened to a value x.

Parameters
  • x – Value of the treatment

  • data_df – Data on which the do-operator is to be applied.

Returns

Value of the outcome when treatment is intervened/set to x.

estimate_confidence_intervals(estimate_value, confidence_level=None, method=None, **kwargs)[source]

Find the confidence intervals corresponding to any estimator By default, this is done with the help of bootstrapped confidence intervals but can be overridden if the specific estimator implements other methods of estimating confidence intervals.

If the method provided is not bootstrap, this function calls the implementation of the specific estimator.

Parameters
  • estimate_value – obtained estimate’s value

  • method – Method for estimating confidence intervals.

  • confidence_level – The confidence level of the confidence intervals of the estimate.

  • kwargs – Other optional args to be passed to the CI method.

Returns

The obtained confidence interval.

estimate_effect()[source]

Base estimation method that calls the estimate_effect method of its calling subclass.

Can optionally also test significance and estimate effect strength for any returned estimate.

Parameters

self – object instance of class Estimator

Returns

A CausalEstimate instance that contains point estimates of average and conditional effects. Based on the parameters provided, it optionally includes confidence intervals, standard errors,statistical significance and other statistical parameters.

estimate_effect_naive()[source]
estimate_std_error(method=None, **kwargs)[source]

Compute standard error of an obtained causal estimate.

Parameters
  • method – Method for computing the standard error.

  • kwargs – Other optional parameters to be passed to the estimating method.

Returns

Standard error of the causal estimate.

evaluate_effect_strength(estimate)[source]
static get_estimator_object(new_data, identified_estimand, estimate)[source]

Create a new estimator of the same type as the one passed in the estimate argument.

Creates a new object with new_data and the identified_estimand

Parameters

new_data – np.ndarray, pd.Series, pd.DataFrame

The newly assigned data on which the estimator should run :param identified_estimand: IdentifiedEstimand An instance of the identified estimand class that provides the information with respect to which causal pathways are employed when the treatment effects the outcome :param estimate: CausalEstimate It is an already existing estimate whose properties we wish to replicate

Returns

An instance of the same estimator class that had generated the given estimate.

static is_bootstrap_parameter_changed(bootstrap_estimates_params, given_params)[source]

Check whether parameters of the bootstrap have changed.

This is an efficiency method that checks if fresh resampling of the bootstrap samples is required. Returns True if parameters have changed and resampling should be done again.

Parameters
  • bootstrap_estimates_params – A dictionary of parameters for the current bootstrap samples

  • given_params – A dictionary of parameters passed by the user

Returns

A binary flag denoting whether the parameters are different.

signif_results_tostr(signif_results)[source]
target_units_tostr()[source]
test_significance(estimate_value, method=None, **kwargs)[source]

Test statistical significance of obtained estimate.

By default, uses resampling to create a non-parametric significance test. A general procedure. Individual child estimators can implement different methods. If the method name is different from “bootstrap”, this function calls the implementation of the child estimator.

Parameters
  • self – object instance of class Estimator

  • estimate_value – obtained estimate’s value

  • method – Method for checking statistical significance

Returns

p-value from the significance test

update_input(treatment_value, control_value, target_units)[source]
class dowhy.causal_estimator.RealizedEstimand(identified_estimand, estimator_name)[source]

Bases: object

update_assumptions(estimator_assumptions)[source]
update_estimand_expression(estimand_expression)[source]

dowhy.causal_graph module

class dowhy.causal_graph.CausalGraph(treatment_name, outcome_name, graph=None, common_cause_names=None, instrument_names=None, effect_modifier_names=None, mediator_names=None, observed_node_names=None, missing_nodes_as_confounders=False)[source]

Bases: object

Class for creating and modifying the causal graph.

Accepts a graph string (or a text file) in gml format (preferred) and dot format. Graphviz-like attributes can be set for edges and nodes. E.g. style=”dashed” as an edge attribute ensures that the edge is drawn with a dashed line.

If a graph string is not given, names of treatment, outcome, and confounders, instruments and effect modifiers (if any) can be provided to create the graph.

add_missing_nodes_as_common_causes(observed_node_names)[source]
add_node_attributes(observed_node_names)[source]
add_unobserved_common_cause(observed_node_names, color='gray')[source]
all_observed(node_names)[source]
build_graph(common_cause_names, instrument_names, effect_modifier_names, mediator_names)[source]

Creates nodes and edges based on variable names and their semantics.

Currently only considers the graphical representation of “direct” effect modifiers. Thus, all effect modifiers are assumed to be “direct” unless otherwise expressed using a graph. Based on the taxonomy of effect modifiers by VanderWheele and Robins: “Four types of effect modification: A classification based on directed acyclic graphs. Epidemiology. 2007.”

check_dseparation(nodes1, nodes2, nodes3, new_graph=None, dseparation_algo='default')[source]
check_valid_backdoor_set(nodes1, nodes2, nodes3, backdoor_paths=None, new_graph=None, dseparation_algo='default')[source]

Assume that the first parameter (nodes1) is the treatment, the second is the outcome, and the third is the candidate backdoor set

check_valid_frontdoor_set(nodes1, nodes2, candidate_nodes, frontdoor_paths=None, new_graph=None, dseparation_algo='default')[source]

Check if valid the frontdoor variables for set of treatments, nodes1 to set of outcomes, nodes2.

check_valid_mediation_set(nodes1, nodes2, candidate_nodes, mediation_paths=None)[source]

Check if candidate nodes are valid mediators for set of treatments, nodes1 to set of outcomes, nodes2.

do_surgery(node_names, remove_outgoing_edges=False, remove_incoming_edges=False)[source]
filter_unobserved_variables(node_names)[source]
get_adjacency_matrix(*args, **kwargs)[source]

Get adjacency matrix from the networkx graph

get_all_directed_paths(nodes1, nodes2)[source]

Get all directed paths between sets of nodes.

Currently only supports singleton sets.

get_all_nodes(include_unobserved=True)[source]
get_ancestors(node_name, new_graph=None)[source]
get_backdoor_paths(nodes1, nodes2)[source]
get_causes(nodes, remove_edges=None)[source]
get_common_causes(nodes1, nodes2)[source]

Assume that nodes1 causes nodes2 (e.g., nodes1 are the treatments and nodes2 are the outcomes)

get_descendants(nodes)[source]
get_effect_modifiers(nodes1, nodes2)[source]
get_instruments(treatment_nodes, outcome_nodes)[source]
get_parents(node_name)[source]
get_unconfounded_observed_subgraph()[source]
has_directed_path(nodes1, nodes2)[source]

Checks if there is any directed path between two sets of nodes.

Currently only supports singleton sets.

is_blocked(path, conditioned_nodes)[source]

Uses d-separation criteria to decide if conditioned_nodes block given path.

view_graph(layout='dot', size=(8, 6), file_name='causal_model')[source]

dowhy.causal_identifier module

class dowhy.causal_identifier.CausalIdentifier(graph, estimand_type, method_name='default', proceed_when_unidentifiable=False)[source]

Bases: object

Class that implements different identification methods.

Currently supports backdoor and instrumental variable identification methods. The identification is based on the causal graph provided.

Other specific ways of identification, such as the ID* algorithm, minimal adjustment criteria, etc. will be added in the future. If you’d like to contribute, please raise an issue or a pull request on Github.

BACKDOOR_DEFAULT = 'default'
BACKDOOR_EXHAUSTIVE = 'exhaustive-search'
BACKDOOR_MAX = 'maximal-adjustment'
BACKDOOR_MIN = 'minimal-adjustment'
DEFAULT_BACKDOOR_METHOD = 'default'
MAX_BACKDOOR_ITERATIONS = 100000
METHOD_NAMES = {'default', 'exhaustive-search', 'maximal-adjustment', 'minimal-adjustment'}
NONPARAMETRIC_ATE = 'nonparametric-ate'
NONPARAMETRIC_NDE = 'nonparametric-nde'
NONPARAMETRIC_NIE = 'nonparametric-nie'
build_backdoor_estimands_dict(treatment_name, outcome_name, backdoor_sets, estimands_dict, proceed_when_unidentifiable=None)[source]

Build the final dict for backdoor sets by filtering unobserved variables if needed.

construct_backdoor_estimand(estimand_type, treatment_name, outcome_name, common_causes)[source]
construct_frontdoor_estimand(estimand_type, treatment_name, outcome_name, frontdoor_variables_names)[source]
construct_iv_estimand(estimand_type, treatment_name, outcome_name, instrument_names)[source]
construct_mediation_estimand(estimand_type, treatment_name, outcome_name, mediators_names)[source]
find_valid_adjustment_sets(treatment_name, outcome_name, backdoor_paths, bdoor_graph, dseparation_algo, backdoor_sets, filt_eligible_variables, method_name, max_iterations)[source]
get_default_backdoor_set_id(backdoor_sets_dict)[source]
identify_ate_effect(optimize_backdoor)[source]
identify_backdoor(treatment_name, outcome_name, include_unobserved=False, dseparation_algo='default')[source]
identify_effect(optimize_backdoor=False)[source]

Main method that returns an identified estimand (if one exists).

If estimand_type is non-parametric ATE, then uses backdoor, instrumental variable and frontdoor identification methods, to check if an identified estimand exists, based on the causal graph.

Parameters

self – instance of the CausalIdentifier class (or its subclass)

Returns

target estimand, an instance of the IdentifiedEstimand class

identify_frontdoor(dseparation_algo='default')[source]

Find a valid frontdoor variable if it exists.

Currently only supports a single variable frontdoor set.

identify_mediation()[source]

Find a valid mediator if it exists.

Currently only supports a single variable mediator set.

identify_mediation_first_stage_confounders(treatment_name, mediators_names)[source]
identify_mediation_second_stage_confounders(mediators_names, outcome_name)[source]
identify_nde_effect()[source]
identify_nie_effect()[source]
class dowhy.causal_identifier.IdentifiedEstimand(identifier, treatment_variable, outcome_variable, estimand_type=None, estimands=None, backdoor_variables=None, instrumental_variables=None, frontdoor_variables=None, mediator_variables=None, mediation_first_stage_confounders=None, mediation_second_stage_confounders=None, default_backdoor_id=None, identifier_method=None, no_directed_path=False)[source]

Bases: object

Class for storing a causal estimand, typically as a result of the identification step.

get_backdoor_variables(key=None)[source]

Return a list containing the backdoor variables.

If the calling estimator method is a backdoor method, return the backdoor variables corresponding to its target estimand. Otherwise, return the backdoor variables for the default backdoor estimand.

get_frontdoor_variables()[source]

Return a list containing the frontdoor variables (if present)

get_instrumental_variables()[source]

Return a list containing the instrumental variables (if present)

get_mediator_variables()[source]

Return a list containing the mediator variables (if present)

set_backdoor_variables(bdoor_variables_arr, key=None)[source]
set_identifier_method(identifier_name)[source]

dowhy.causal_model module

Module containing the main model class for the dowhy package.

class dowhy.causal_model.CausalModel(data, treatment, outcome, graph=None, common_causes=None, instruments=None, effect_modifiers=None, estimand_type='nonparametric-ate', proceed_when_unidentifiable=False, missing_nodes_as_confounders=False, identify_vars=False, **kwargs)[source]

Bases: object

Main class for storing the causal model state.

Initialize data and create a causal graph instance.

Assigns treatment and outcome variables. Also checks and finds the common causes and instruments for treatment and outcome.

At least one of graph, common_causes or instruments must be provided. If none of these variables are provided, then learn_graph() can be used later.

Parameters

data – a pandas dataframe containing treatment, outcome and other

variables. :param treatment: name of the treatment variable :param outcome: name of the outcome variable :param graph: path to DOT file containing a DAG or a string containing a DAG specification in DOT format :param common_causes: names of common causes of treatment and _outcome. Only used when graph is None. :param instruments: names of instrumental variables for the effect of treatment on outcome. Only used when graph is None. :param effect_modifiers: names of variables that can modify the treatment effect. If not provided, then the causal graph is used to find the effect modifiers. Estimators will return multiple different estimates based on each value of effect_modifiers. :param estimand_type: the type of estimand requested (currently only “nonparametric-ate” is supported). In the future, may support other specific parametric forms of identification. :param proceed_when_unidentifiable: does the identification proceed by ignoring potential unobserved confounders. Binary flag. :param missing_nodes_as_confounders: Binary flag indicating whether variables in the dataframe that are not included in the causal graph, should be automatically included as confounder nodes. :param identify_vars: Variable deciding whether to compute common causes, instruments and effect modifiers while initializing the class. identify_vars should be set to False when user is providing common_causes, instruments or effect modifiers on their own(otherwise the identify_vars code can override the user provided values). Also it does not make sense if no graph is given. :returns: an instance of CausalModel class

do(x, identified_estimand, method_name=None, fit_estimator=True, method_params=None)[source]

Do operator for estimating values of the outcome after intervening on treatment.

Parameters
  • x – interventional value of the treatment variable

  • identified_estimand – a probability expression that represents the effect to be estimated. Output of CausalModel.identify_effect method

  • method_name – any of the estimation method to be used. See docs for estimate_effect method for a list of supported estimation methods.

  • fit_estimator – Boolean flag on whether to fit the estimator.

Setting it to False is useful to compute the do-operation on new data using a previously fitted estimator. :param method_params: Dictionary containing any method-specific parameters. These are passed directly to the estimating method.

Returns

an instance of the CausalEstimate class, containing the causal effect estimate and other method-dependent information

estimate_effect(identified_estimand, method_name=None, control_value=0, treatment_value=1, test_significance=None, evaluate_effect_strength=False, confidence_intervals=False, target_units='ate', effect_modifiers=None, fit_estimator=True, method_params=None)[source]

Estimate the identified causal effect.

Currently requires an explicit method name to be specified. Method names follow the convention of identification method followed by the specific estimation method: “[backdoor/iv].estimation_method_name”. Following methods are supported.
  • Propensity Score Matching: “backdoor.propensity_score_matching”

  • Propensity Score Stratification: “backdoor.propensity_score_stratification”

  • Propensity Score-based Inverse Weighting: “backdoor.propensity_score_weighting”

  • Linear Regression: “backdoor.linear_regression”

  • Generalized Linear Models (e.g., logistic regression): “backdoor.generalized_linear_model”

  • Instrumental Variables: “iv.instrumental_variable”

  • Regression Discontinuity: “iv.regression_discontinuity”

In addition, you can directly call any of the EconML estimation methods. The convention is “backdoor.econml.path-to-estimator-class”. For example, for the double machine learning estimator (“DML” class) that is located inside “dml” module of EconML, you can use the method name, “backdoor.econml.dml.DML”. CausalML estimators can also be called. See this demo notebook.

Parameters
  • identified_estimand – a probability expression that represents the effect to be estimated. Output of CausalModel.identify_effect method

  • method_name – name of the estimation method to be used.

  • control_value – Value of the treatment in the control group, for effect estimation. If treatment is multi-variate, this can be a list.

  • treatment_value – Value of the treatment in the treated group, for effect estimation. If treatment is multi-variate, this can be a list.

  • test_significance – Binary flag on whether to additionally do a statistical signficance test for the estimate.

  • evaluate_effect_strength – (Experimental) Binary flag on whether to estimate the relative strength of the treatment’s effect. This measure can be used to compare different treatments for the same outcome (by running this method with different treatments sequentially).

  • confidence_intervals – (Experimental) Binary flag indicating whether confidence intervals should be computed.

  • target_units – (Experimental) The units for which the treatment effect should be estimated. This can be of three types. (1) a string for common specifications of target units (namely, “ate”, “att” and “atc”), (2) a lambda function that can be used as an index for the data (pandas DataFrame), or (3) a new DataFrame that contains values of the effect_modifiers and effect will be estimated only for this new data.

  • effect_modifiers – Names of effect modifier variables can be (optionally) specified here too, since they do not affect identification. If None, the effect_modifiers from the CausalModel are used.

  • fit_estimator – Boolean flag on whether to fit the estimator.

Setting it to False is useful to estimate the effect on new data using a previously fitted estimator. :param method_params: Dictionary containing any method-specific parameters. These are passed directly to the estimating method. See the docs for each estimation method for allowed method-specific params.

Returns

An instance of the CausalEstimate class, containing the causal effect estimate and other method-dependent information

get_common_causes()[source]
get_effect_modifiers()[source]
get_instruments()[source]
identify_effect(estimand_type=None, method_name='default', proceed_when_unidentifiable=None, optimize_backdoor=False)[source]

Identify the causal effect to be estimated, using properties of the causal graph.

Parameters
  • method_name – Method name for identification algorithm. (“id-algorithm” or “default”)

  • proceed_when_unidentifiable – Binary flag indicating whether identification should proceed in the presence of (potential) unobserved confounders.

Returns

a probability expression (estimand) for the causal effect if identified, else NULL

init_graph(graph, identify_vars)[source]

Initialize self._graph using graph provided by the user.

interpret(method_name=None, **kwargs)[source]

Interpret the causal model.

Parameters
  • method_name – method used for interpreting the model. If None, then default interpreter is chosen that describes the model summary and shows the associated causal graph.

  • kwargs: – Optional parameters that are directly passed to the interpreter method.

Returns

None

learn_graph(method_name='cdt.causality.graph.LiNGAM', *args, **kwargs)[source]

Learn causal graph from the data. This function takes the method name as input and initializes the causal graph object using the learnt graph.

Parameters
  • self – instance of the CausalModel class (or its subclass)

  • method_name – Exact method name of the object to be imported from the concerned library.

Returns

an instance of the CausalGraph class initialized with the learned graph.

refute_estimate(estimand, estimate, method_name=None, **kwargs)[source]

Refute an estimated causal effect.

If method_name is provided, uses the provided method. In the future, we may support automatic selection of suitable refutation tests. Following refutation methods are supported.
  • Adding a randomly-generated confounder: “random_common_cause”

  • Adding a confounder that is associated with both treatment and outcome: “add_unobserved_common_cause”

  • Replacing the treatment with a placebo (random) variable): “placebo_treatment_refuter”

  • Removing a random subset of the data: “data_subset_refuter”

Parameters
  • estimand – target estimand, an instance of the IdentifiedEstimand class (typically, the output of identify_effect)

  • estimate – estimate to be refuted, an instance of the CausalEstimate class (typically, the output of estimate_effect)

  • method_name – name of the refutation method

  • kwargs – (optional) additional arguments that are passed directly to the refutation method. Can specify a random seed here to ensure reproducible results (‘random_seed’ parameter). For method-specific parameters, consult the documentation for the specific method. All refutation methods are in the causal_refuters subpackage.

Returns

an instance of the RefuteResult class

summary(print_to_stdout=False)[source]

Print a text summary of the model.

Returns

a string containining the summary

view_model(layout='dot', size=(8, 6), file_name='causal_model')[source]

View the causal DAG.

Parameters
  • layout – string specifying the layout of the graph.

  • size – tuple (x, y) specifying the width and height of the figure in inches.

  • file_name – string specifying the file name for the saved causal graph png.

Returns

a visualization of the graph

dowhy.causal_refuter module

class dowhy.causal_refuter.CausalRefutation(estimated_effect, new_effect, refutation_type)[source]

Bases: object

Class for storing the result of a refutation method.

add_refuter(refuter_instance)[source]
add_significance_test_results(refutation_result)[source]
interpret(method_name=None, **kwargs)[source]

Interpret the refutation results.

Parameters

method_name – Method used (string) or a list of methods. If None, then the default for the specific refuter is used.

Returns

None

class dowhy.causal_refuter.CausalRefuter(data, identified_estimand, estimate, **kwargs)[source]

Bases: object

Base class for different refutation methods.

Subclasses implement specific refutations methods.

DEFAULT_NUM_SIMULATIONS = 100
choose_variables(required_variables)[source]

This method provides a way to choose the confounders whose values we wish to modify for finding its effect on the ability of the treatment to affect the outcome.

perform_bootstrap_test(estimate, simulations)[source]
perform_normal_distribution_test(estimate, simulations)[source]
refute_estimate()[source]
test_significance(estimate, simulations, test_type='auto', significance_level=0.05)[source]

Tests the statistical significance of the estimate obtained to the simulations produced by a refuter.

The basis behind using the sample statistics of the refuter when we are in fact testing the estimate, is due to the fact that, we would ideally expect them to follow the same distribition

For refutation tests (e.g., placebo refuters), consider the null distribution as a distribution of effect estimates over multiple simulations with placebo treatment, and compute how likely the true estimate (e.g., zero for placebo test) is under the null. If the probability of true effect estimate is lower than the p-value, then estimator method fails the test.

For sensitivity analysis tests (e.g., bootstrap, subset or common cause refuters), the null distribution captures the distribution of effect estimates under the “true” dataset (e.g., with an additional confounder or different sampling), and we compute the probability of the obtained estimate under this distribution. If the probability is lower than the p-value, then the estimator method fails the test

Null Hypothesis: The estimate is a part of the distribution Alternative Hypothesis: The estimate does not fall in the distribution.

Parameters

'estimate' – CausalEstimate

The estimate obtained from the estimator for the original data. :param ‘simulations’: np.array An array containing the result of the refuter for the simulations :param ‘test_type’: string, default ‘auto’ The type of test the user wishes to perform. :param ‘significance_level’: float, default 0.05 The significance level for the statistical test

Returns

significance_dict: Dict

A Dict containing the p_value and a boolean that indicates if the result is statistically significant

dowhy.data_transformer module

class dowhy.data_transformer.DimensionalityReducer(data_array, ndims, **kwargs)[source]

Bases: object

reduce(target_dimensions=None)[source]

dowhy.datasets module

Module for generating some sample datasets.

dowhy.datasets.choice(a, size=None, replace=True, p=None)

Generates a random sample from a given 1-D array

New in version 1.7.0.

Note

New code should use the choice method of a default_rng() instance instead; please see the random-quick-start.

a1-D array-like or int

If an ndarray, a random sample is generated from its elements. If an int, the random sample is generated as if it were np.arange(a)

sizeint or tuple of ints, optional

Output shape. If the given shape is, e.g., (m, n, k), then m * n * k samples are drawn. Default is None, in which case a single value is returned.

replaceboolean, optional

Whether the sample is with or without replacement. Default is True, meaning that a value of a can be selected multiple times.

p1-D array-like, optional

The probabilities associated with each entry in a. If not given, the sample assumes a uniform distribution over all entries in a.

samplessingle item or ndarray

The generated random samples

ValueError

If a is an int and less than zero, if a or p are not 1-dimensional, if a is an array-like of size 0, if p is not a vector of probabilities, if a and p have different lengths, or if replace=False and the sample size is greater than the population size

randint, shuffle, permutation random.Generator.choice: which should be used in new code

Setting user-specified probabilities through p uses a more general but less efficient sampler than the default. The general sampler produces a different sample than the optimized sampler even if each element of p is 1 / len(a).

Sampling random rows from a 2-D array is not possible with this function, but is possible with Generator.choice through its axis keyword.

Generate a uniform random sample from np.arange(5) of size 3:

>>> np.random.choice(5, 3)
array([0, 3, 4]) # random
>>> #This is equivalent to np.random.randint(0,5,3)

Generate a non-uniform random sample from np.arange(5) of size 3:

>>> np.random.choice(5, 3, p=[0.1, 0, 0.3, 0.6, 0])
array([3, 3, 0]) # random

Generate a uniform random sample from np.arange(5) of size 3 without replacement:

>>> np.random.choice(5, 3, replace=False)
array([3,1,0]) # random
>>> #This is equivalent to np.random.permutation(np.arange(5))[:3]

Generate a non-uniform random sample from np.arange(5) of size 3 without replacement:

>>> np.random.choice(5, 3, replace=False, p=[0.1, 0, 0.3, 0.6, 0])
array([2, 3, 0]) # random

Any of the above can be repeated with an arbitrary array-like instead of just integers. For instance:

>>> aa_milne_arr = ['pooh', 'rabbit', 'piglet', 'Christopher']
>>> np.random.choice(aa_milne_arr, 5, p=[0.5, 0.1, 0.1, 0.3])
array(['pooh', 'pooh', 'pooh', 'Christopher', 'piglet'], # random
      dtype='<U11')
dowhy.datasets.construct_col_names(name, num_vars, num_discrete_vars, num_discrete_levels, one_hot_encode)[source]
dowhy.datasets.convert_to_categorical(arr, num_vars, num_discrete_vars, quantiles=[0.25, 0.5, 0.75], one_hot_encode=False)[source]
dowhy.datasets.create_dot_graph(treatments, outcome, common_causes, instruments, effect_modifiers=[], frontdoor_variables=[])[source]
dowhy.datasets.create_gml_graph(treatments, outcome, common_causes, instruments, effect_modifiers=[], frontdoor_variables=[])[source]
dowhy.datasets.linear_dataset(beta, num_common_causes, num_samples, num_instruments=0, num_effect_modifiers=0, num_treatments=1, num_frontdoor_variables=0, treatment_is_binary=True, outcome_is_binary=False, num_discrete_common_causes=0, num_discrete_instruments=0, num_discrete_effect_modifiers=0, stddev_treatment_noise=1, one_hot_encode=False)[source]
dowhy.datasets.sigmoid(x)[source]
dowhy.datasets.simple_iv_dataset(beta, num_samples, num_treatments=1, treatment_is_binary=True, outcome_is_binary=False)[source]

Simple instrumental variable dataset with a single IV and a single confounder.

dowhy.datasets.stochastically_convert_to_binary(x)[source]
dowhy.datasets.xy_dataset(num_samples, effect=True, num_common_causes=1, is_linear=True, sd_error=1)[source]

dowhy.do_sampler module

class dowhy.do_sampler.DoSampler(data, params=None, variable_types=None, num_cores=1, causal_model=None, keep_original_treatment=False)[source]

Bases: object

Base class for a sampler from the interventional distribution.

Initializes a do sampler with data and names of relevant variables.

Do sampling implements the do() operation from Pearl (2000). This is an operation is defined on a causal bayesian network, an explicit implementation of which is the basis for the MCMC sampling method.

We abstract the idea behind the three-step process to allow other methods, as well. The disrupt_causes method is the means to make treatment assignment ignorable. In the Pearlian framework, this is where we cut the edges pointing into the causal state. With other methods, this will typically be by using some approach which assumes conditional ignorability (e.g. weighting, or explicit conditioning with Robins G-formula.)

Next, the make_treatment_effective method reflects the assumption that the intervention we impose is “effective”. Most simply, we fix the causal state to some specific value. We skip this step there is no value specified for the causal state, and the original values are used instead.

Finally, we sample from the resulting distribution. This can be either from a point_sample method, in the case that the inference method doesn’t support batch sampling, or the sample method in the case that it does. For convenience, the point_sample method parallelizes with multiprocessing using the num_cores kwargs to set the number of cores to use for parallelization.

While different methods will have their own class attributes, the _df method should be common to all methods. This is them temporary dataset which starts as a copy of the original data, and is modified to reflect the steps of the do operation. Read through the existing methods (weighting is likely the most minimal) to get an idea of how this works to implement one yourself.

Parameters
  • data – pandas.DataFrame containing the data

  • identified_estimand – dowhy.causal_identifier.IdentifiedEstimand: and estimand using a backdoor method

for effect identification. :param treatments: list or str: names of the treatment variables :param outcomes: list or str: names of the outcome variables :param variable_types: dict: A dictionary containing the variable’s names and types. ‘c’ for continuous, ‘o’ for ordered, ‘d’ for discrete, and ‘u’ for unordered discrete. :param keep_original_treatment: bool: Whether to use make_treatment_effective, or to keep the original treatment assignments. :param params: (optional) additional method parameters

disrupt_causes()[source]

Override this method to render treatment assignment conditionally ignorable :return:

do_sample(x)[source]
make_treatment_effective(x)[source]

This is more likely the implementation you’d like to use, but some methods may require overriding this method to make the treatment effective. :param x: :return:

point_sample()[source]
reset()[source]

If your DoSampler has more attributes that the _df attribute, you should reset them all to their initialization values by overriding this method. :return:

sample()[source]

By default, this expects a sampler to be built on class initialization which contains a sample method. Override this method if you want to use a different approach to sampling. :return:

dowhy.graph_learner module

class dowhy.graph_learner.GraphLearner(data, library_class, *args, **kwargs)[source]

Bases: object

Base class for causal discovery methods.

Subclasses implement different discovery methods. All discovery methods are in the package “dowhy.causal_discoverers”

learn_graph()[source]

Discover causal graph and the graph in DOT format.

dowhy.interpreter module

class dowhy.interpreter.Interpreter(instance, **kwargs)[source]

Bases: object

Base class for all interpretation methods.

Initialize an interpreter.

Parameters

instance – An object of type CausalModel, CausalEstimate or CausalRefutation.

SUPPORTED_ESTIMATORS = []
SUPPORTED_MODELS = []
SUPPORTED_REFUTERS = []
interpret()[source]

Method that implements the functionality of an interpreter.

To be overridden by interpreter sub-classes.

dowhy.plotter module

dowhy.plotter.plot_causal_effect(estimate, treatment, outcome)[source]
dowhy.plotter.plot_treatment_outcome(treatment, outcome, time_var)[source]

Module contents