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STaSy: Score-based Tabular data Synthesis

About

Tabular data synthesis is a long-standing research topic in machine learning. Many different methods have been proposed over the past decades, ranging from statistical methods to deep generative methods. However, it has not always been successful due to the complicated nature of real-world tabular data. In this paper, we present a new model named Score-based Tabular data Synthesis (STaSy) and its training strategy based on the paradigm of score-based generative modeling. Despite the fact that score-based generative models have resolved many issues in generative models, there still exists room for improvement in tabular data synthesis. Our proposed training strategy includes a self-paced learning technique and a fine-tuning strategy, which further increases the sampling quality and diversity by stabilizing the denoising score matching training. Furthermore, we also conduct rigorous experimental studies in terms of the generative task trilemma: sampling quality, diversity, and time. In our experiments with 15 benchmark tabular datasets and 7 baselines, our method outperforms existing methods in terms of task-dependant evaluations and diversity. Code is available at https://github.com/JayoungKim408/STaSy.

Jayoung Kim, Chaejeong Lee, Noseong Park• 2022

Related benchmarks

TaskDatasetResultRank
Tabular Data UtilityCalifornia (test)
AUC0.997
14
Tabular Data UtilityAdult (test)
AUC0.903
14
Tabular Data UtilityMagic (test)
AUC0.923
14
Tabular Data UtilityDefault (test)
AUC0.749
14
Tabular Data UtilityShoppers (test)
AUC0.909
13
Tabular Data SynthesisAggregate of five tabular datasets (full train vs original train)
Marginal Error12.35
13
Tabular Data GenerationCH
MLE0.738
6
Tabular Data GenerationBU
MLE88.1
6
Tabular Data GenerationDI
MLE0.727
4
Tabular Data GenerationAB
MLE0.482
2
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