AI RESEARCH

Benchmarking Optimizers for MLPs in Tabular Deep Learning

arXiv CS.LG

ArXi:2604.15297v1 Announce Type: new MLP is a heavily used backbone in modern deep learning (DL) architectures for supervised learning on tabular data, and AdamW is the go-to optimizer used to train tabular DL models. Unlike architecture design, however, the choice of optimizer for tabular DL has not been examined systematically, despite new optimizers showing promise in other domains. To fill this gap, we benchmark \Noptimizers optimizers on \Ndatasets tabular datasets for