PTaRL: Prototype-based Tabular Representation Learning via Space Calibration
Hangting Ye, Wei Fan, Xiaozhuang Song, Shun Zheng, He Zhao, Dandan, Guo, Yi Chang

TL;DR
PTaRL introduces a prototype-based framework for tabular data that enhances representation disentanglement and localization, leading to improved prediction performance across diverse benchmarks.
Contribution
The paper proposes a novel prototype learning framework, PTaRL, with space calibration strategies to improve deep tabular ML models by reducing entanglement and enhancing interpretability.
Findings
PTaRL outperforms state-of-the-art models on various benchmarks.
Disentangled representations improve prediction stability.
Prototype orthogonalization enhances model robustness.
Abstract
Tabular data have been playing a mostly important role in diverse real-world fields, such as healthcare, engineering, finance, etc. With the recent success of deep learning, many tabular machine learning (ML) methods based on deep networks (e.g., Transformer, ResNet) have achieved competitive performance on tabular benchmarks. However, existing deep tabular ML methods suffer from the representation entanglement and localization, which largely hinders their prediction performance and leads to performance inconsistency on tabular tasks. To overcome these problems, we explore a novel direction of applying prototype learning for tabular ML and propose a prototype-based tabular representation learning framework, PTaRL, for tabular prediction tasks. The core idea of PTaRL is to construct prototype-based projection space (P-Space) and learn the disentangled representation around global data…
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Taxonomy
TopicsNatural Language Processing Techniques · Human Pose and Action Recognition · Handwritten Text Recognition Techniques
MethodsLinear Layer · Multi-Head Attention · Attention Is All You Need · Softmax · Byte Pair Encoding · Layer Normalization · Label Smoothing · Absolute Position Encodings · Position-Wise Feed-Forward Layer · Adam
