Abstract

Deep Learning (DL) has been widely used in many applications, and its success is achieved with large training data. A key issue is how to provide a DL solution when there is no large training data to learn initially. In this paper, we explore a meta-learning approach for a specific problem, subgraph isomorphism counting, which is a fundamental problem in graph analysis to count the number of a given pattern graph, p, in a data graph, g, that matches p. There are various data graphs and pattern graphs. A subgraph isomorphism counting query is specified by a pair, (gp). This problem is NP-hard and needs large training data to learn by DL in nature. We design a Gaussian Process (GP) model which combines Graph Neural Network with Bayesian nonparametric, and we train the GP by a meta-learning algorithm on a small set of training data. By meta-learning, we can obtain a generalized meta-model to better encode the information of data and pattern graphs and capture the prior of small tasks. With the meta-model learned, we handle a collection of pairs (gp), as a task, where some pairs may be associated with the ground-truth, and some pairs are the queries to answer. There are two cases. One is there are some with ground-truth (few-shot), and one is there is none with ground-truth (zero-shot). We provide our solutions for both. In particular, for zero-shot, we propose a new data-driven approach to predict the count values. Note that zero-shot learning for our regression tasks is difficult, and there is no hands-on solution in the literature. We conducted extensive experimental studies to confirm that our approach is robust to model degeneration on small training data, and our meta-model can fast adapt to new queries by few-shot and zero-shot learning.

Details

Title
Learning with Small Data: Subgraph Counting Queries
Author
Zhao, Kangfei 1 ; He, Zongyan 2 ; Yu, Jeffrey Xu 2 ; Rong, Yu 3 

 Beijing Institute of Technology, Beijing, China (GRID:grid.43555.32) (ISNI:0000 0000 8841 6246) 
 The Chinese University of Hong Kong, Hong Kong, China (GRID:grid.10784.3a) (ISNI:0000 0004 1937 0482) 
 Tencent AI Lab, Shenzhen, China (GRID:grid.471330.2) (ISNI:0000 0004 6359 9743) 
Pages
292-305
Publication year
2023
Publication date
Sep 2023
Publisher
Springer Nature B.V.
e-ISSN
2364-1541
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2890356375
Copyright
© The Author(s) 2023. This work is published under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.