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arxiv 2411.10982 v2 pith:Z3NB4S2H submitted 2024-11-17 cs.LG stat.MEstat.ML

Towards a framework on tabular synthetic data generation: a minimalist approach: theory, use cases, and limitations

classification cs.LG stat.MEstat.ML
keywords datamethodappliedapproachcasesdimensionalframeworkgeneration
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We propose and study a minimalist approach towards synthetic tabular data generation. The model consists of a minimalistic unsupervised SparsePCA encoder (with contingent clustering step or log transformation to handle nonlinearity) and XGboost decoder which is SOTA for structured data regression and classification tasks. We study and contrast the methodologies with (variational) autoencoders in several toy low dimensional scenarios to derive necessary intuitions. The framework is applied to high dimensional simulated credit scoring data which parallels real-life financial applications. We applied the method to robustness testing to demonstrate practical use cases. The case study result suggests that the method provides an alternative to raw and quantile perturbation for model robustness testing. We show that the method is simplistic, guarantees interpretability all the way through, does not require extra tuning and provide unique benefits.

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  1. Synthetic Flight Data Generation Using Generative Models

    cs.LG 2026-04 unverdicted novelty 3.0

    Synthetic flight data generated by TVAE and Gaussian Copula models supports flight delay prediction models with accuracy comparable to real data.