English

Deep Feature Learning for Graphs

Machine Learning 2017-10-17 v2 Machine Learning Social and Information Networks

Abstract

This paper presents a general graph representation learning framework called DeepGL for learning deep node and edge representations from large (attributed) graphs. In particular, DeepGL begins by deriving a set of base features (e.g., graphlet features) and automatically learns a multi-layered hierarchical graph representation where each successive layer leverages the output from the previous layer to learn features of a higher-order. Contrary to previous work, DeepGL learns relational functions (each representing a feature) that generalize across-networks and therefore useful for graph-based transfer learning tasks. Moreover, DeepGL naturally supports attributed graphs, learns interpretable features, and is space-efficient (by learning sparse feature vectors). In addition, DeepGL is expressive, flexible with many interchangeable components, efficient with a time complexity of O(E)\mathcal{O}(|E|), and scalable for large networks via an efficient parallel implementation. Compared with the state-of-the-art method, DeepGL is (1) effective for across-network transfer learning tasks and attributed graph representation learning, (2) space-efficient requiring up to 6x less memory, (3) fast with up to 182x speedup in runtime performance, and (4) accurate with an average improvement of 20% or more on many learning tasks.

Keywords

Cite

@article{arxiv.1704.08829,
  title  = {Deep Feature Learning for Graphs},
  author = {Ryan A. Rossi and Rong Zhou and Nesreen K. Ahmed},
  journal= {arXiv preprint arXiv:1704.08829},
  year   = {2017}
}