LGJun 14, 2024

TabularFM: An Open Framework For Tabular Foundational Models

arXiv:2406.09837v23 citationsHas Code
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This work addresses the gap in foundational models for structured tabular data, which is prevalent but lacks resources, by providing an open-source framework to enhance usability and validity in the field.

The paper tackles the under-studied problem of foundational models for tabular data by introducing TabularFM, an open framework that includes curated datasets, pretrained models, and benchmarks, achieving a release of a million cleaned datasets and pretrained models to facilitate future research.

Foundational models (FMs), pretrained on extensive datasets using self-supervised techniques, are capable of learning generalized patterns from large amounts of data. This reduces the need for extensive labeled datasets for each new task, saving both time and resources by leveraging the broad knowledge base established during pretraining. Most research on FMs has primarily focused on unstructured data, such as text and images, or semi-structured data, like time-series. However, there has been limited attention to structured data, such as tabular data, which, despite its prevalence, remains under-studied due to a lack of clean datasets and insufficient research on the transferability of FMs for various tabular data tasks. In response to this gap, we introduce a framework called TabularFM, which incorporates state-of-the-art methods for developing FMs specifically for tabular data. This includes variations of neural architectures such as GANs, VAEs, and Transformers. We have curated a million of tabular datasets and released cleaned versions to facilitate the development of tabular FMs. We pretrained FMs on this curated data, benchmarked various learning methods on these datasets, and released the pretrained models along with leaderboards for future comparative studies. Our fully open-sourced system provides a comprehensive analysis of the transferability of tabular FMs. By releasing these datasets, pretrained models, and leaderboards, we aim to enhance the validity and usability of tabular FMs in the near future.

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