Challenges and opportunities of generative models on tabular data

IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
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引用次数: 0

Abstract

Tabular data, organized like tables with rows and columns, is widely used. Existing models for tabular data synthesis often face limitations related to data size or complexity. In contrast, deep generative models, a part of deep learning, demonstrate proficiency in handling large and complex data sets. While these models have shown remarkable success in generating image and audio data, their application in tabular data synthesis is relatively new, lacking a comprehensive comparison with existing methods. To fill this gap, this study aims to systematically evaluate and compare the performance of deep generative models with these existing methods for tabular data synthesis, while also investigating the efficacy of post-processing techniques. We aim to identify strengths and limitations and provide insights for future research and practical applications. Our study showed that the Synthetic Minority Oversampling Technique (SMOTE) and its variants outperform deep generative models, especially for small datasets. However, we observed that an ensemble of deep generative models and post-generation processing performs better on large datasets than SMOTE alone. The results of our study indicate that deep generative models hold promise as a valuable tool for generating tabular data. Nonetheless, further research is warranted to enhance the performance of deep generative models and gain a comprehensive understanding of their limitations.

表格数据生成模型的挑战与机遇
表格数据的组织形式类似于有行和列的表格,被广泛使用。现有的表格数据合成模型往往面临与数据大小或复杂性相关的限制。相比之下,深度生成模型(深度学习的一部分)在处理大型复杂数据集方面表现出很强的能力。虽然这些模型在生成图像和音频数据方面取得了显著的成功,但它们在表格数据合成方面的应用相对较新,缺乏与现有方法的全面比较。为了填补这一空白,本研究旨在系统地评估和比较深度生成模型与这些现有方法在表格数据合成方面的性能,同时研究后处理技术的功效。我们旨在找出优势和局限,为未来研究和实际应用提供启示。我们的研究表明,合成少数群体过度采样技术(SMOTE)及其变体优于深度生成模型,尤其是在小型数据集上。不过,我们观察到,在大型数据集上,深度生成模型和后处理的集合比单独的 SMOTE 性能更好。我们的研究结果表明,深度生成模型有望成为生成表格数据的重要工具。不过,还需要进一步研究,以提高深度生成模型的性能,并全面了解其局限性。
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来源期刊
Applied Soft Computing
Applied Soft Computing 工程技术-计算机:跨学科应用
CiteScore
15.80
自引率
6.90%
发文量
874
审稿时长
10.9 months
期刊介绍: Applied Soft Computing is an international journal promoting an integrated view of soft computing to solve real life problems.The focus is to publish the highest quality research in application and convergence of the areas of Fuzzy Logic, Neural Networks, Evolutionary Computing, Rough Sets and other similar techniques to address real world complexities. Applied Soft Computing is a rolling publication: articles are published as soon as the editor-in-chief has accepted them. Therefore, the web site will continuously be updated with new articles and the publication time will be short.
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