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Main Authors: Ye, Han-Jia, Zhou, Qi-Le, Yin, Huai-Hong, Zhan, De-Chuan, Chao, Wei-Lun
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2311.00055
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author Ye, Han-Jia
Zhou, Qi-Le
Yin, Huai-Hong
Zhan, De-Chuan
Chao, Wei-Lun
author_facet Ye, Han-Jia
Zhou, Qi-Le
Yin, Huai-Hong
Zhan, De-Chuan
Chao, Wei-Lun
contents Pre-training is prevalent in deep learning for vision and text data, leveraging knowledge from other datasets to enhance downstream tasks. However, for tabular data, the inherent heterogeneity in attribute and label spaces across datasets complicates the learning of shareable knowledge. We propose Tabular data Pre-Training via Meta-representation (TabPTM), aiming to pre-train a general tabular model over diverse datasets. The core idea is to embed data instances into a shared feature space, where each instance is represented by its distance to a fixed number of nearest neighbors and their labels. This ''meta-representation'' transforms heterogeneous tasks into homogeneous local prediction problems, enabling the model to infer labels (or scores for each label) based on neighborhood information. As a result, the pre-trained TabPTM can be applied directly to new datasets, regardless of their diverse attributes and labels, without further fine-tuning. Extensive experiments on 101 datasets confirm TabPTM's effectiveness in both classification and regression tasks, with and without fine-tuning.
format Preprint
id arxiv_https___arxiv_org_abs_2311_00055
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Rethinking Pre-Training in Tabular Data: A Neighborhood Embedding Perspective
Ye, Han-Jia
Zhou, Qi-Le
Yin, Huai-Hong
Zhan, De-Chuan
Chao, Wei-Lun
Machine Learning
Pre-training is prevalent in deep learning for vision and text data, leveraging knowledge from other datasets to enhance downstream tasks. However, for tabular data, the inherent heterogeneity in attribute and label spaces across datasets complicates the learning of shareable knowledge. We propose Tabular data Pre-Training via Meta-representation (TabPTM), aiming to pre-train a general tabular model over diverse datasets. The core idea is to embed data instances into a shared feature space, where each instance is represented by its distance to a fixed number of nearest neighbors and their labels. This ''meta-representation'' transforms heterogeneous tasks into homogeneous local prediction problems, enabling the model to infer labels (or scores for each label) based on neighborhood information. As a result, the pre-trained TabPTM can be applied directly to new datasets, regardless of their diverse attributes and labels, without further fine-tuning. Extensive experiments on 101 datasets confirm TabPTM's effectiveness in both classification and regression tasks, with and without fine-tuning.
title Rethinking Pre-Training in Tabular Data: A Neighborhood Embedding Perspective
topic Machine Learning
url https://arxiv.org/abs/2311.00055