Metadata-Version: 2.1
Name: fairlearn
Version: 0.4.4
Summary: Algorithms for mitigating unfairness in supervised machine learning
Home-page: https://github.com/fairlearn/fairlearn
Author: Miroslav Dudik, Richard Edgar, Brandon Horn, Roman Lutz
Author-email: fairlearn@microsoft.com
License: UNKNOWN
Description: [![Build Status](https://dev.azure.com/responsibleai/fairlearn/_apis/build/status/Nightly?branchName=master)](https://dev.azure.com/responsibleai/fairlearn/_build/latest?definitionId=23&branchName=master) ![MIT license](https://img.shields.io/badge/License-MIT-blue.svg) ![PyPI](https://img.shields.io/pypi/v/fairlearn?color=blue)
        
        # fairlearn
        
        The fairlearn project seeks to enable anyone involved in the development of artificial intelligence (AI) systems to assess their system's fairness and mitigate the observed unfairness. The fairlearn repository contains a Python package and Jupyter notebooks with the examples of usage.
        
        - [Current release](https://github.com/fairlearn/fairlearn/tree/v0.4.4#current-release)
        - [What we mean by _fairness_](https://github.com/fairlearn/fairlearn/tree/v0.4.4#what-we-mean-by-fairness)
        - [Overview of fairlearn](https://github.com/fairlearn/fairlearn/tree/v0.4.4#overview-of-fairlearn)
        - [Install fairlearn](https://github.com/fairlearn/fairlearn/tree/v0.4.4#install-fairlearn)
        - [Usage](https://github.com/fairlearn/fairlearn/tree/v0.4.4#usage)
        - [Contributing](https://github.com/fairlearn/fairlearn/tree/v0.4.4#contributing)
        - [Maintainers](https://github.com/fairlearn/fairlearn/tree/v0.4.4#maintainers)
        - [Issues](https://github.com/fairlearn/fairlearn/tree/v0.4.4#issues)
        
        ## Current release
        
        - The current stable release is available at [fairlearn v0.4.4](https://github.com/fairlearn/fairlearn/tree/v0.4.4).
        
        - Our current version differs substantially from version 0.2 or earlier. Users of these older versions should visit our [onboarding guide](https://github.com/fairlearn/fairlearn/tree/v0.4.4#onboarding-guide).
        
        ## What we mean by _fairness_
        
        An AI system can behave unfairly for a variety of reasons. In fairlearn, we define whether an AI system is behaving unfairly in terms of its impact on people &ndash; i.e., in terms of harms. We focus on two kinds of harms:
        
        - _Allocation harms._ These harms can occur when AI systems extend or withhold opportunities, resources, or information. Some of the key applications are in hiring, school admissions, and lending.
        
        - _Quality-of-service harms._ Quality of service refers to whether a system works as well for one person as it does for another, even if no opportunities, resources, or information are extended or withheld.
        
        We follow the approach known as **group fairness**, which asks: _Which groups of individuals are at risk for experiencing harms?_ The relevant groups need to be specified by the data scientist and are application specific.
        
        Group fairness is formalized by a set of constraints, which require that some aspect (or aspects) of the AI system's behavior be comparable across the groups. The fairlearn package enables assessment and mitigation of unfairness under several common definitions.
        To learn more about our definitions of fairness, please visit our [terminology page](https://github.com/fairlearn/fairlearn/tree/v0.4.4/TERMINOLOGY.md#fairness-of-ai-systems).
        
        >_Note_:
        > Fairness is fundamentally a sociotechnical challenge. Many aspects of fairness, such as justice and due process, are not captured by quantitative fairness metrics. Furthermore, there are many quantitative fairness metrics which cannot all be satisfied simultaneously. Our goal is to enable humans to assess different mitigation strategies and then make trade-offs appropriate to their scenario.
        
        ## Overview of fairlearn
        
        The `fairlearn` package contains the following algorithms for mitigating unfairness in binary classification and regression:
        
        | algorithm | description | classification/regression | sensitive features | supported fairness definitions |
        | --- | --- | --- | --- | --- |
        | `fairlearn.` `reductions.` `ExponentiatedGradient` | Black-box approach to fair classification described in [A Reductions Approach to Fair Classification](https://arxiv.org/abs/1803.02453)| binary classification | categorical | DP, EO |
        | `fairlearn.` `reductions.` `GridSearch` | Black-box approach described in Section 3.4 of [A Reductions Approach to Fair Classification](https://arxiv.org/abs/1803.02453)| binary classification | binary | DP, EO |
        | `fairlearn.` `reductions.` `GridSearch` | Black-box approach that implements a grid-search variant of the algorithm described in Section 5 of [Fair Regression: Quantitative Definitions and Reduction-based Algorithms](https://arxiv.org/abs/1905.12843) | regression | binary | BGL |
        | `fairlearn.` `postprocessing.` `ThresholdOptimizer` | Postprocessing algorithm based on the paper [Equality of Opportunity in Supervised Learning](https://arxiv.org/abs/1610.02413). This technique takes as input an existing classifier and the sensitive feature, and derives a monotone transformation of the classifier's prediction to enforce the specified parity constraints. | binary classification | categorical | DP, EO |
        
        > _Note_:
        > DP refers to demographic parity, EO to equalized odds, and BGL to bounded group loss. For more information on these and other terms we use in this repository please refer to the [terminology page](https://github.com/fairlearn/fairlearn/tree/v0.4.4/TERMINOLOGY.md). To request additional algorithms or fairness definitions, please open a [new issue](https://github.com/fairlearn/fairlearn/issues).
        
        ## Install fairlearn
        
        The package can be installed via
        
        ```python
        pip install fairlearn
        ```
        
        or optionally with a full feature set by adding extras, e.g. `pip install fairlearn[customplots]`.
        
        or you can clone the repository locally via
        
        ```python
        git clone git@github.com:fairlearn/fairlearn.git
        ```
        
        To verify that the cloned repository works (the pip package does not include the tests), run
        
        ```python
        pip install -r requirements.txt
        python -m pytest -s ./test/unit
        ```
        
        
        <details name="onboarding-guide">
        <summary>
        <strong>
        <em>
        Onboarding guide for users of version 0.2 or earlier
        </em>
        </strong>
        </summary>
        
        Up to version 0.2, fairlearn contained only the exponentiated gradient method. The fairlearn repository now has a more comprehensive scope and aims to incorporate other methods as specified above. The same exponentiated gradient technique is now the class `fairlearn.reductions.ExponentiatedGradient`. While in the past exponentiated gradient was invoked via
        
        ```python
        import numpy as np
        from fairlearn.classred import expgrad
        from fairlearn.moments import DP
        
        estimator = LogisticRegression()  # or any other estimator
        exponentiated_gradient_result = expgrad(X, sensitive_features, y, estimator, constraints=DP())
        positive_probabilities = exponentiated_gradient_result.best_classifier(X)
        randomized_predictions = (positive_probabilities >= np.random.rand(len(positive_probabilities))) * 1
        ```
        
        the equivalent operation is now
        
        ```python
        from fairlearn.reductions import ExponentiatedGradient, DemographicParity
        
        estimator = LogisticRegression()  # or any other estimator
        exponentiated_gradient = ExponentiatedGradient(estimator, constraints=DemographicParity())
        exponentiated_gradient.fit(X, y, sensitive_features=sensitive_features)
        randomized_predictions = exponentiated_gradient.predict(X)
        ```
        
        Please open a [new issue](https://github.com/fairlearn/fairlearn/issues) if you encounter any problems.
        
        </details>
        
        ## Usage
        
        For common usage refer to the [Jupyter notebooks](./notebooks) and our [API guide](https://github.com/fairlearn/fairlearn/tree/v0.4.4/CONTRIBUTING.md#api)
        
        ## Contributing
        
        To contribute please check our [contributing guide](https://github.com/fairlearn/fairlearn/tree/v0.4.4/CONTRIBUTING.md).
        
        ## Maintainers
        
        The fairlearn project is maintained by:
        
        - **@MiroDudik**
        - **@riedgar-ms**
        - **@rihorn2**
        - **@romanlutz**
        
        For a full list of contributors refer to the [authors page](https://github.com/fairlearn/fairlearn/tree/v0.4.4/AUTHORS.md)
        
        ## Issues
        
        ### Regular (non-security) issues
        
        Please submit a report through [GitHub issues](https://github.com/fairlearn/fairlearn/issues). A maintainer will respond promptly as follows:
        - **bug**: triage as `bug` and provide estimated timeline based on severity
        - **feature request**: triage as `feature request` and provide estimated timeline
        - **question** or **discussion**: triage as `question` and either respond or notify/identify a suitable expert to respond
        
        Maintainers will try to link duplicate issues when possible.
        
        ### Reporting security issues
        
        Please take a look at our guidelines for reporting [security issues](https://github.com/fairlearn/fairlearn/tree/v0.4.4/SECURITY.md).
        
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Development Status :: 3 - Alpha
Requires-Python: >=3.5
Description-Content-Type: text/markdown
Provides-Extra: customplots
