TabTreeFormer: Tabular Data Generation Using Hybrid Tree-Transformer

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View a PDF of the paper titled TabTreeFormer: Tabular Data Generation Using Hybrid Tree-Transformer, by Jiayu Li and 6 other authors

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Abstract:Transformers have achieved remarkable success in tabular data generation. However, they lack domain-specific inductive biases which are critical to preserving the intrinsic characteristics of tabular data. Meanwhile, they suffer from poor scalability and efficiency due to quadratic computational complexity. In this paper, we propose TabTreeFormer, a hybrid transformer architecture that incorporates a tree-based model that retains tabular-specific inductive biases of non-smooth and potentially low-correlated patterns due to its discreteness and non-rotational invariance, and hence enhances the fidelity and utility of synthetic data. In addition, we devise a dual-quantization tokenizer to capture the multimodal continuous distribution and further facilitate the learning of numerical value distribution. Moreover, our proposed tokenizer reduces the vocabulary size and sequence length due to the limited dimension-wise semantic meaning and training set size of tabular data, rendering a significant model size shrink without sacrificing the capability of the transformer model. We evaluate TabTreeFormer on 10 datasets against multiple generative models on various metrics; our experimental results show that TabTreeFormer achieves superior fidelity, utility, privacy, and efficiency. Our best model yields a 40% utility improvement with 1/16 of the baseline model size.

Submission history

From: Jiayu Li [view email]
[v1]
Thu, 2 Jan 2025 11:57:08 UTC (765 KB)
[v2]
Fri, 3 Jan 2025 15:58:31 UTC (764 KB)



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