时间图上的时间感知邻居抽样

Yiwei Wang, Yujun Cai, Yuxuan Liang, Henghui Ding, Changhu Wang, Bryan Hooi
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引用次数: 0

摘要

提出了一种新的时间图邻域采样方法。在时间图中,预测不同节点的时变特性可能需要不同时间尺度的接受邻域。在这项工作中,我们提出了TNS(时间感知邻居采样)方法:TNS从时间信息中学习,在任何时候为每个节点提供自适应的接受邻居。学习如何采样邻居是不平凡的,因为邻居指数在时间顺序上是离散的,不可微的。为了解决这个问题,我们通过插值邻居的消息将邻居索引从离散值转换为连续值。在不增加时间复杂度的情况下,TNS可以灵活地加入到流行的时态图网络中,以提高其有效性。TNS可以以端到端方式进行训练。它不需要额外的监督,并且自动和隐含地引导对最有利于预测的邻居进行采样。在多个标准数据集上的实验结果表明,TNS在边缘预测和节点分类方面取得了显著的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-Aware Neighbor Sampling on Temporal Graphs
We present a new neighbor sampling method on temporal graphs. In a temporal graph, predicting different nodes' time-varying properties can require the receptive neigh-borhood of various temporal scales. In this work, we propose the TNS (Time-aware Neighbor Sampling) method: TNS learns from temporal information to provide an adaptive receptive neighborhood for every node at any time. Learning how to sample neighbors is non-trivial, since the neighbor indices in time order are discrete and not differentiable. To address this challenge, we transform neighbor indices from discrete values to continuous ones by interpolating the neighbors' messages. TNS can be flexibly incorporated into popular temporal graph networks to improve their effectiveness without increasing their time complexity. TNS can be trained in an end-to-end manner. It requires no extra supervision and is automatically and implicitly guided to sample the neighbors that are most beneficial for prediction. Empirical results on multiple standard datasets show that TNS yields significant gains on edge prediction and node classification.
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