论文标题

T2G形式:将表格特征组织到关系图中促进异质特征相互作用

T2G-Former: Organizing Tabular Features into Relation Graphs Promotes Heterogeneous Feature Interaction

论文作者

Yan, Jiahuan, Chen, Jintai, Wu, Yixuan, Chen, Danny Z., Wu, Jian

论文摘要

DNNS在自动特征相互作用的能力中,用于表格学习的深度神经网络(DNNS)的最新发展很大程度上受益匪浅。但是,表格特征的异质性性质使得这样的特征相对独立,开发有效的促进表格特征相互作用的方法仍然是一个空旷的问题。在本文中,我们提出了一个新颖的图估计器,该估计器自动估计表格特征之间的关系,并通过在相关特征之间分配边来构建图形。这样的关系图将独立的表格特征组织到一种图形数据中,以便可以有序的方式进行节点(表格特征)的相互作用。基于我们提出的图形估计器,我们提供了一个定制的变压器网络,该网络定制为表格学习,称为T2G Former,该网络通过执行由关系图指导的表格特征相互作用来处理表格数据。特定的跨层读数收集了T2G形成层在不同级别的T2G形成层中预测的显着特征,并获得了最终预测的全球语义。综合实验表明,我们的T2G形式在DNN中取得了卓越的性能,并且与非深度梯度增强决策树模型具有竞争力。

Recent development of deep neural networks (DNNs) for tabular learning has largely benefited from the capability of DNNs for automatic feature interaction. However, the heterogeneity nature of tabular features makes such features relatively independent, and developing effective methods to promote tabular feature interaction still remains an open problem. In this paper, we propose a novel Graph Estimator, which automatically estimates the relations among tabular features and builds graphs by assigning edges between related features. Such relation graphs organize independent tabular features into a kind of graph data such that interaction of nodes (tabular features) can be conducted in an orderly fashion. Based on our proposed Graph Estimator, we present a bespoke Transformer network tailored for tabular learning, called T2G-Former, which processes tabular data by performing tabular feature interaction guided by the relation graphs. A specific Cross-level Readout collects salient features predicted by the layers in T2G-Former across different levels, and attains global semantics for final prediction. Comprehensive experiments show that our T2G-Former achieves superior performance among DNNs and is competitive with non-deep Gradient Boosted Decision Tree models.

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