GANDALF
Gated Adaptive Network for Deep Automated Learning of Features
Description
We propose a novel high-performance, interpretable, and parameter & computationally efficient deep learning architecture for tabular data, Gated Adaptive Network for Deep Automated Learning of Features (GANDALF). GANDALF relies on a new tabular processing unit with a gating mechanism and in-built feature selection called Gated Feature Learning Unit (GFLU) as a feature representation learning unit. We demonstrate that GANDALF outperforms or stays at-par with SOTA approaches like XGBoost, SAINT, FT-Transformers, etc. by experiments on multiple established public benchmarks. We have made available the code at github.com/manujosephv/pytorch_tabular under MIT License.
Papers Using This Method
Disentangling stellar atmospheric parameters in astronomical spectra using Generative Adversarial Neural Networks2025-01-20A Survey on Deep Tabular Learning2024-10-15Learning label-label correlations in Extreme Multi-label Classification via Label Features2024-05-03GANDALF: Gated Adaptive Network for Deep Automated Learning of Features2022-07-18