Unsupervised Episode Generation for Graph Meta-learning

06/27/2023
by   Jihyeong Jung, et al.
0

In this paper, we investigate Unsupervised Episode Generation methods to solve Few-Shot Node-Classification (FSNC) problem via Meta-learning without labels. Dominant meta-learning methodologies for FSNC were developed under the existence of abundant labeled nodes for training, which however may not be possible to obtain in the real-world. Although few studies have been proposed to tackle the label-scarcity problem, they still rely on a limited amount of labeled data, which hinders the full utilization of the information of all nodes in a graph. Despite the effectiveness of Self-Supervised Learning (SSL) approaches on FSNC without labels, they mainly learn generic node embeddings without consideration on the downstream task to be solved, which may limit its performance. In this work, we propose unsupervised episode generation methods to benefit from their generalization ability for FSNC tasks while resolving label-scarcity problem. We first propose a method that utilizes graph augmentation to generate training episodes called g-UMTRA, which however has several drawbacks, i.e., 1) increased training time due to the computation of augmented features and 2) low applicability to existing baselines. Hence, we propose Neighbors as Queries (NaQ), which generates episodes from structural neighbors found by graph diffusion. Our proposed methods are model-agnostic, that is, they can be plugged into any existing graph meta-learning models, while not sacrificing much of their performance or sometimes even improving them. We provide theoretical insights to support why our unsupervised episode generation methodologies work, and extensive experimental results demonstrate the potential of our unsupervised episode generation methods for graph meta-learning towards FSNC problems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/01/2021

A Brief Summary of Interactions Between Meta-Learning and Self-Supervised Learning

This paper briefly reviews the connections between meta-learning and sel...
research
09/19/2023

Graph Contrastive Learning Meets Graph Meta Learning: A Unified Method for Few-shot Node Tasks

Graph Neural Networks (GNNs) have become popular in Graph Representation...
research
05/30/2023

Task-Equivariant Graph Few-shot Learning

Although Graph Neural Networks (GNNs) have been successful in node class...
research
11/02/2021

Diverse Distributions of Self-Supervised Tasks for Meta-Learning in NLP

Meta-learning considers the problem of learning an efficient learning pr...
research
07/06/2020

Node Classification on Graphs with Few-Shot Novel Labels via Meta Transformed Network Embedding

We study the problem of node classification on graphs with few-shot nove...
research
08/28/2023

Unleash Model Potential: Bootstrapped Meta Self-supervised Learning

The long-term goal of machine learning is to learn general visual repres...
research
02/22/2021

Unsupervised Meta Learning for One Shot Title Compression in Voice Commerce

Product title compression for voice and mobile commerce is a well studie...

Please sign up or login with your details

Forgot password? Click here to reset