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Exploring Innovative Approaches to Synthetic Tabular Data Generation

Computer Science

Exploring Innovative Approaches to Synthetic Tabular Data Generation

E. Papadaki, A. G. Vrahatis, et al.

Dive into the revolutionary methodologies of data generation with cutting-edge insights from Eugenia Papadaki, Aristidis G. Vrahatis, and Sotiris Kotsiantis. This paper explores statistical and machine learning techniques, including GANs and innovative strategies, tackling challenges like data scarcity and privacy concerns—all while enhancing interpretability.

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Playback language: English
Abstract
This comprehensive review explores data generation methodologies, focusing on statistical and machine learning-based approaches. Novel strategies like the divide-and-conquer (DC) approach and models such as GANBLR are examined, addressing challenges in preserving data relationships and enhancing interpretability. The integration of GANs is highlighted for its revolutionary impact across various sectors. The review analyzes how these techniques mitigate class imbalance, data scarcity, and privacy concerns, examining evaluation metrics and diverse applications. It concludes with insights into future research directions and the evolving role of synthetic data in advancing machine learning and data-driven solutions.
Publisher
Electronics
Published On
Jan 01, 2024
Authors
Eugenia Papadaki, Aristidis G. Vrahatis, Sotiris Kotsiantis
Tags
data generation
machine learning
statistical approaches
GANs
class imbalance
data scarcity
privacy concerns
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