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May, 2023
变压器中的图归纳偏差,无需消息传递
Graph Inductive Biases in Transformers without Message Passing
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Liheng Ma, Chen Lin, Derek Lim, Adriana Romero-Soriano, Puneet K. Dokania...
TL;DR
GRIT是一种新的图形变压器,它不使用消息传递,而是通过相对位置编码、灵活的注意机制和注入每层度信息等结构改变来整合图形感应偏差,并在多个图形数据集上实现了最先进的经验性能。
Abstract
Transformers for graph data are increasingly widely studied and successful in numerous learning tasks.
graph inductive biases
are crucial for
graph transformers
, and previous works incorporate them using
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