Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

On the Efficiency of NLP-Inspired Methods for Tabular Deep Learning

About

Recent advancements in tabular deep learning (DL) have led to substantial performance improvements, surpassing the capabilities of traditional models. With the adoption of techniques from natural language processing (NLP), such as language model-based approaches, DL models for tabular data have also grown in complexity and size. Although tabular datasets do not typically pose scalability issues, the escalating size of these models has raised efficiency concerns. Despite its importance, efficiency has been relatively underexplored in tabular DL research. This paper critically examines the latest innovations in tabular DL, with a dual focus on performance and computational efficiency. The source code is available at https://github.com/basf/mamba-tabular.

Anton Frederik Thielmann, Soheila Samiee• 2024

Related benchmarks

TaskDatasetResultRank
ClassificationLung
ACC90.5
96
ClassificationAdult
Accuracy75.2
86
ClassificationTOX_171
Accuracy85.8
78
ClassificationColon
Accuracy84.2
78
ClassificationGLI_85
Accuracy79.68
78
ClassificationALLAML
Accuracy88.92
72
ClassificationSMK_CAN_187
Accuracy60.02
72
ClassificationHDLSS Datasets Summary
Average Rank8
66
ClassificationProstate_GE
Accuracy90.5
64
ClassificationARCENE
Accuracy81.5
60
Showing 10 of 40 rows

Other info

Follow for update