Graph convolutional networks for learning with few clean and many noisy labels

10/01/2019
by   Ahmet Iscen, et al.
42

In this work we consider the problem of learning a classifier from noisy labels when a few clean labeled examples are given. The structure of clean and noisy data is modeled by a graph per class and Graph Convolutional Networks (GCN) are used to predict class relevance of noisy examples. For each class, the GCN is treated as a binary classifier learning to discriminate clean from noisy examples using a weighted binary cross-entropy loss function, and then the GCN-inferred "clean" probability is exploited as a relevance measure. Each noisy example is weighted by its relevance when learning a classifier for the end task. We evaluate our method on an extended version of a few-shot learning problem, where the few clean examples of novel classes are supplemented with additional noisy data. Experimental results show that our GCN-based cleaning process significantly improves the classification accuracy over not cleaning the noisy data and standard few-shot classification where only few clean examples are used. The proposed GCN-based method outperforms the transductive approach (Douze et al., 2018) that is using the same additional data without labels.

READ FULL TEXT
research
04/05/2021

Label-GCN: An Effective Method for Adding Label Propagation to Graph Convolutional Networks

We show that a modification of the first layer of a Graph Convolutional ...
research
10/02/2022

The Dynamic of Consensus in Deep Networks and the Identification of Noisy Labels

Deep neural networks have incredible capacity and expressibility, and ca...
research
09/24/2019

Layerwise Relevance Visualization in Convolutional Text Graph Classifiers

Representations in the hidden layers of Deep Neural Networks (DNN) are o...
research
06/05/2019

Variational Spectral Graph Convolutional Networks

We propose a Bayesian approach to spectral graph convolutional networks ...
research
02/27/2021

RA-GCN: Graph Convolutional Network for Disease Prediction Problems with Imbalanced Data

Disease prediction is a well-known classification problem in medical app...
research
10/12/2017

Graph Convolutional Networks for Classification with a Structured Label Space

It is a usual practice to ignore any structural information underlying c...
research
06/18/2020

Sequential Graph Convolutional Network for Active Learning

We propose a novel generic sequential Graph Convolution Network (GCN) tr...

Please sign up or login with your details

Forgot password? Click here to reset