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Calibrate and Debias Layer-wise Sampling for Graph Convolutional Networks
Yifan Chen
, Tianning Xu
, Dilek Hakkani-Tur
, Di Jin
, Yun Yang
, Ruoqing Zhu
Department of Computer Science
Research output
:
Contribution to journal
›
Journal article
›
peer-review
3
Citations (Scopus)
Overview
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Keyphrases
Sampling Methods
100%
Sampling Probability
100%
Graph Convolutional Network
100%
Debiasing
100%
Publicly Available
50%
Variance Estimation
50%
New Principle
50%
Matrix Approximation
50%
Multiple Samples
50%
Estimation Bias
50%
Node Embedding
50%
Algorithm Implementation
50%
Network Training
50%
Importance Sampling
50%
Code Implementation
50%
Layerwise Theory
50%
Sampling without Replacement
50%
Estimation Experiment
50%
Sample Estimation
50%
Probability Bias
50%
Embedding Aggregation
50%
Mathematics
Probability Theory
100%
Graph Convolutional Network
100%
Variance Estimation
50%
Approximated Matrix
50%
Importance Sampling
50%
Sampling Without Replacement
50%
Computer Science
Graph Convolutional Network
100%
Node Embedding
50%
Approximated Matrix
50%
Importance Sampling
50%
Estimation Variance
50%