RTDL (Research on Tabular Deep Learning) is a collection of papers and packages on deep learning for tabular data.
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Note
The list of projects below is up-to-date, but the rtdl Python package is deprecated.
If you used the rtdl package, please, read the details.
rtdl is deprecated: it is replaced with other packages.rtdl==0.0.13 installed from PyPI (not from GitHub!)
as pip install rtdl, then the same models
(MLP, ResNet, FT-Transformer) can be found in the rtdl_revisiting_models package,
though API is slightly different.rtdl_num_embeddings package, in turn,
is more efficient and correct).(2024) TabM: Advancing Tabular Deep Learning with Parameter-Efficient Ensembling
Paper
Code
Usage
(2024) TabReD: Analyzing Pitfalls and Filling the Gaps in Tabular Deep Learning Benchmarks
Paper
Code
(2023) TabR: Tabular Deep Learning Meets Nearest Neighbors
Paper
Code
(2022) TabDDPM: Modelling Tabular Data with Diffusion Models
Paper
Code
(2022) Revisiting Pretraining Objectives for Tabular Deep Learning
Paper
Code
(2022) On Embeddings for Numerical Features in Tabular Deep Learning
Paper
Code
Package (rtdl_num_embeddings)
(2021) Revisiting Deep Learning Models for Tabular Data
Paper
Code
Package (rtdl_revisiting_models)
(2019) Neural Oblivious Decision Ensembles for Deep Learning on Tabular Data
Paper
Code