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Main Authors: Apellániz, Patricia A., Jiménez, Ana, Galende, Borja Arroyo, Parras, Juan, Zazo, Santiago
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.03080
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author Apellániz, Patricia A.
Jiménez, Ana
Galende, Borja Arroyo
Parras, Juan
Zazo, Santiago
author_facet Apellániz, Patricia A.
Jiménez, Ana
Galende, Borja Arroyo
Parras, Juan
Zazo, Santiago
contents While synthetic tabular data generation using Deep Generative Models (DGMs) offers a compelling solution to data scarcity and privacy concerns, their effectiveness relies on the availability of substantial training data, often lacking in real-world scenarios. To overcome this limitation, we propose a novel methodology that explicitly integrates artificial inductive biases into the generative process to improve data quality in low-data regimes. Our framework leverages transfer learning and meta-learning techniques to construct and inject informative inductive biases into DGMs. We evaluate four approaches (pre-training, model averaging, Model-Agnostic Meta-Learning (MAML), and Domain Randomized Search (DRS)) and analyze their impact on the quality of the generated text. Experimental results show that incorporating inductive bias substantially improves performance, with transfer learning methods outperforming meta-learning, achieving up to 60\% gains in Jensen-Shannon divergence. The methodology is model-agnostic and especially relevant in domains such as healthcare and finance, where high-quality synthetic data are essential, and data availability is often limited.
format Preprint
id arxiv_https___arxiv_org_abs_2407_03080
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Artificial Inductive Bias for Synthetic Tabular Data Generation in Data-Scarce Scenarios
Apellániz, Patricia A.
Jiménez, Ana
Galende, Borja Arroyo
Parras, Juan
Zazo, Santiago
Machine Learning
Artificial Intelligence
I.2.0
While synthetic tabular data generation using Deep Generative Models (DGMs) offers a compelling solution to data scarcity and privacy concerns, their effectiveness relies on the availability of substantial training data, often lacking in real-world scenarios. To overcome this limitation, we propose a novel methodology that explicitly integrates artificial inductive biases into the generative process to improve data quality in low-data regimes. Our framework leverages transfer learning and meta-learning techniques to construct and inject informative inductive biases into DGMs. We evaluate four approaches (pre-training, model averaging, Model-Agnostic Meta-Learning (MAML), and Domain Randomized Search (DRS)) and analyze their impact on the quality of the generated text. Experimental results show that incorporating inductive bias substantially improves performance, with transfer learning methods outperforming meta-learning, achieving up to 60\% gains in Jensen-Shannon divergence. The methodology is model-agnostic and especially relevant in domains such as healthcare and finance, where high-quality synthetic data are essential, and data availability is often limited.
title Artificial Inductive Bias for Synthetic Tabular Data Generation in Data-Scarce Scenarios
topic Machine Learning
Artificial Intelligence
I.2.0
url https://arxiv.org/abs/2407.03080