Simultaneous Improvement of ML Model Fairness and Performance by
Identifying Bias in Data
- URL: http://arxiv.org/abs/2210.13182v1
- Date: Mon, 24 Oct 2022 13:04:07 GMT
- Title: Simultaneous Improvement of ML Model Fairness and Performance by
Identifying Bias in Data
- Authors: Bhushan Chaudhari, Akash Agarwal, Tanmoy Bhowmik
- Abstract summary: We propose a data preprocessing technique that can detect instances ascribing a specific kind of bias that should be removed from the dataset before training.
In particular, we claim that in the problem settings where instances exist with similar feature but different labels caused by variation in protected attributes, an inherent bias gets induced in the dataset.
- Score: 1.76179873429447
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Machine learning models built on datasets containing discriminative instances
attributed to various underlying factors result in biased and unfair outcomes.
It's a well founded and intuitive fact that existing bias mitigation strategies
often sacrifice accuracy in order to ensure fairness. But when AI engine's
prediction is used for decision making which reflects on revenue or operational
efficiency such as credit risk modelling, it would be desirable by the business
if accuracy can be somehow reasonably preserved. This conflicting requirement
of maintaining accuracy and fairness in AI motivates our research. In this
paper, we propose a fresh approach for simultaneous improvement of fairness and
accuracy of ML models within a realistic paradigm. The essence of our work is a
data preprocessing technique that can detect instances ascribing a specific
kind of bias that should be removed from the dataset before training and we
further show that such instance removal will have no adverse impact on model
accuracy. In particular, we claim that in the problem settings where instances
exist with similar feature but different labels caused by variation in
protected attributes , an inherent bias gets induced in the dataset, which can
be identified and mitigated through our novel scheme. Our experimental
evaluation on two open-source datasets demonstrates how the proposed method can
mitigate bias along with improving rather than degrading accuracy, while
offering certain set of control for end user.
Related papers
- Understanding trade-offs in classifier bias with quality-diversity optimization: an application to talent management [2.334978724544296]
A major struggle for the development of fair AI models lies in the bias implicit in the data available to train such models.
We propose a method for visualizing the biases inherent in a dataset and understanding the potential trade-offs between fairness and accuracy.
arXiv Detail & Related papers (2024-11-25T22:14:02Z) - Editable Fairness: Fine-Grained Bias Mitigation in Language Models [52.66450426729818]
We propose a novel debiasing approach, Fairness Stamp (FAST), which enables fine-grained calibration of individual social biases.
FAST surpasses state-of-the-art baselines with superior debiasing performance.
This highlights the potential of fine-grained debiasing strategies to achieve fairness in large language models.
arXiv Detail & Related papers (2024-08-07T17:14:58Z) - Achievable Fairness on Your Data With Utility Guarantees [16.78730663293352]
In machine learning fairness, training models that minimize disparity across different sensitive groups often leads to diminished accuracy.
We present a computationally efficient approach to approximate the fairness-accuracy trade-off curve tailored to individual datasets.
We introduce a novel methodology for quantifying uncertainty in our estimates, thereby providing practitioners with a robust framework for auditing model fairness.
arXiv Detail & Related papers (2024-02-27T00:59:32Z) - Fair Multivariate Adaptive Regression Splines for Ensuring Equity and
Transparency [1.124958340749622]
We propose a fair predictive model based on MARS that incorporates fairness measures in the learning process.
MARS is a non-parametric regression model that performs feature selection, handles non-linear relationships, generates interpretable decision rules, and derives optimal splitting criteria on the variables.
We apply our fairMARS model to real-world data and demonstrate its effectiveness in terms of accuracy and equity.
arXiv Detail & Related papers (2024-02-23T19:02:24Z) - Fairness Without Harm: An Influence-Guided Active Sampling Approach [32.173195437797766]
We aim to train models that mitigate group fairness disparity without causing harm to model accuracy.
The current data acquisition methods, such as fair active learning approaches, typically require annotating sensitive attributes.
We propose a tractable active data sampling algorithm that does not rely on training group annotations.
arXiv Detail & Related papers (2024-02-20T07:57:38Z) - Fast Model Debias with Machine Unlearning [54.32026474971696]
Deep neural networks might behave in a biased manner in many real-world scenarios.
Existing debiasing methods suffer from high costs in bias labeling or model re-training.
We propose a fast model debiasing framework (FMD) which offers an efficient approach to identify, evaluate and remove biases.
arXiv Detail & Related papers (2023-10-19T08:10:57Z) - Learning for Counterfactual Fairness from Observational Data [62.43249746968616]
Fairness-aware machine learning aims to eliminate biases of learning models against certain subgroups described by certain protected (sensitive) attributes such as race, gender, and age.
A prerequisite for existing methods to achieve counterfactual fairness is the prior human knowledge of the causal model for the data.
In this work, we address the problem of counterfactually fair prediction from observational data without given causal models by proposing a novel framework CLAIRE.
arXiv Detail & Related papers (2023-07-17T04:08:29Z) - Delving into Identify-Emphasize Paradigm for Combating Unknown Bias [52.76758938921129]
We propose an effective bias-conflicting scoring method (ECS) to boost the identification accuracy.
We also propose gradient alignment (GA) to balance the contributions of the mined bias-aligned and bias-conflicting samples.
Experiments are conducted on multiple datasets in various settings, demonstrating that the proposed solution can mitigate the impact of unknown biases.
arXiv Detail & Related papers (2023-02-22T14:50:24Z) - Leveraging Unlabeled Data to Predict Out-of-Distribution Performance [63.740181251997306]
Real-world machine learning deployments are characterized by mismatches between the source (training) and target (test) distributions.
In this work, we investigate methods for predicting the target domain accuracy using only labeled source data and unlabeled target data.
We propose Average Thresholded Confidence (ATC), a practical method that learns a threshold on the model's confidence, predicting accuracy as the fraction of unlabeled examples.
arXiv Detail & Related papers (2022-01-11T23:01:12Z) - Learning from others' mistakes: Avoiding dataset biases without modeling
them [111.17078939377313]
State-of-the-art natural language processing (NLP) models often learn to model dataset biases and surface form correlations instead of features that target the intended task.
Previous work has demonstrated effective methods to circumvent these issues when knowledge of the bias is available.
We show a method for training models that learn to ignore these problematic correlations.
arXiv Detail & Related papers (2020-12-02T16:10:54Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.