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Main Authors: Nakamura-Sakai, Shinpei, Hamad, Fadi, Obitayo, Saheed, Potluru, Vamsi K.
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2309.05079
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author Nakamura-Sakai, Shinpei
Hamad, Fadi
Obitayo, Saheed
Potluru, Vamsi K.
author_facet Nakamura-Sakai, Shinpei
Hamad, Fadi
Obitayo, Saheed
Potluru, Vamsi K.
contents Synthetic data generation has emerged as a crucial topic for financial institutions, driven by multiple factors, such as privacy protection and data augmentation. Many algorithms have been proposed for synthetic data generation but reaching the consensus on which method we should use for the specific data sets and use cases remains challenging. Moreover, the majority of existing approaches are ``unsupervised'' in the sense that they do not take into account the downstream task. To address these issues, this work presents a novel synthetic data generation framework. The framework integrates a supervised component tailored to the specific downstream task and employs a meta-learning approach to learn the optimal mixture distribution of existing synthetic distributions.
format Preprint
id arxiv_https___arxiv_org_abs_2309_05079
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle A supervised generative optimization approach for tabular data
Nakamura-Sakai, Shinpei
Hamad, Fadi
Obitayo, Saheed
Potluru, Vamsi K.
Machine Learning
Synthetic data generation has emerged as a crucial topic for financial institutions, driven by multiple factors, such as privacy protection and data augmentation. Many algorithms have been proposed for synthetic data generation but reaching the consensus on which method we should use for the specific data sets and use cases remains challenging. Moreover, the majority of existing approaches are ``unsupervised'' in the sense that they do not take into account the downstream task. To address these issues, this work presents a novel synthetic data generation framework. The framework integrates a supervised component tailored to the specific downstream task and employs a meta-learning approach to learn the optimal mixture distribution of existing synthetic distributions.
title A supervised generative optimization approach for tabular data
topic Machine Learning
url https://arxiv.org/abs/2309.05079