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Main Authors: Belgodere, Brian, Dognin, Pierre, Ivankay, Adam, Melnyk, Igor, Mroueh, Youssef, Mojsilovic, Aleksandra, Navratil, Jiri, Nitsure, Apoorva, Padhi, Inkit, Rigotti, Mattia, Ross, Jerret, Schiff, Yair, Vedpathak, Radhika, Young, Richard A.
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2304.10819
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author Belgodere, Brian
Dognin, Pierre
Ivankay, Adam
Melnyk, Igor
Mroueh, Youssef
Mojsilovic, Aleksandra
Navratil, Jiri
Nitsure, Apoorva
Padhi, Inkit
Rigotti, Mattia
Ross, Jerret
Schiff, Yair
Vedpathak, Radhika
Young, Richard A.
author_facet Belgodere, Brian
Dognin, Pierre
Ivankay, Adam
Melnyk, Igor
Mroueh, Youssef
Mojsilovic, Aleksandra
Navratil, Jiri
Nitsure, Apoorva
Padhi, Inkit
Rigotti, Mattia
Ross, Jerret
Schiff, Yair
Vedpathak, Radhika
Young, Richard A.
contents Real-world data often exhibits bias, imbalance, and privacy risks. Synthetic datasets have emerged to address these issues. This paradigm relies on generative AI models to generate unbiased, privacy-preserving data while maintaining fidelity to the original data. However, assessing the trustworthiness of synthetic datasets and models is a critical challenge. We introduce a holistic auditing framework that comprehensively evaluates synthetic datasets and AI models. It focuses on preventing bias and discrimination, ensures fidelity to the source data, assesses utility, robustness, and privacy preservation. We demonstrate the framework's effectiveness by auditing various generative models across diverse use cases like education, healthcare, banking, and human resources, spanning different data modalities such as tabular, time-series, vision, and natural language. This holistic assessment is essential for compliance with regulatory safeguards. We introduce a trustworthiness index to rank synthetic datasets based on their safeguards trade-offs. Furthermore, we present a trustworthiness-driven model selection and cross-validation process during training, exemplified with "TrustFormers" across various data types. This approach allows for controllable trustworthiness trade-offs in synthetic data creation. Our auditing framework fosters collaboration among stakeholders, including data scientists, governance experts, internal reviewers, external certifiers, and regulators. This transparent reporting should become a standard practice to prevent bias, discrimination, and privacy violations, ensuring compliance with policies and providing accountability, safety, and performance guarantees.
format Preprint
id arxiv_https___arxiv_org_abs_2304_10819
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Auditing and Generating Synthetic Data with Controllable Trust Trade-offs
Belgodere, Brian
Dognin, Pierre
Ivankay, Adam
Melnyk, Igor
Mroueh, Youssef
Mojsilovic, Aleksandra
Navratil, Jiri
Nitsure, Apoorva
Padhi, Inkit
Rigotti, Mattia
Ross, Jerret
Schiff, Yair
Vedpathak, Radhika
Young, Richard A.
Machine Learning
Artificial Intelligence
Real-world data often exhibits bias, imbalance, and privacy risks. Synthetic datasets have emerged to address these issues. This paradigm relies on generative AI models to generate unbiased, privacy-preserving data while maintaining fidelity to the original data. However, assessing the trustworthiness of synthetic datasets and models is a critical challenge. We introduce a holistic auditing framework that comprehensively evaluates synthetic datasets and AI models. It focuses on preventing bias and discrimination, ensures fidelity to the source data, assesses utility, robustness, and privacy preservation. We demonstrate the framework's effectiveness by auditing various generative models across diverse use cases like education, healthcare, banking, and human resources, spanning different data modalities such as tabular, time-series, vision, and natural language. This holistic assessment is essential for compliance with regulatory safeguards. We introduce a trustworthiness index to rank synthetic datasets based on their safeguards trade-offs. Furthermore, we present a trustworthiness-driven model selection and cross-validation process during training, exemplified with "TrustFormers" across various data types. This approach allows for controllable trustworthiness trade-offs in synthetic data creation. Our auditing framework fosters collaboration among stakeholders, including data scientists, governance experts, internal reviewers, external certifiers, and regulators. This transparent reporting should become a standard practice to prevent bias, discrimination, and privacy violations, ensuring compliance with policies and providing accountability, safety, and performance guarantees.
title Auditing and Generating Synthetic Data with Controllable Trust Trade-offs
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2304.10819