Network Embedding has been widely studied to model and manage data in a variety of real-world applications. However, most existing works focus on networks with single-typed nodes or edges, with limited consideration of unbalanced distributions of nodes and edges. In real-world applications, networks usually consist of billions of various types of nodes and edges with abundant attributes. To tackle these challenges, in this paper we propose a multi-semantic metapath (MSM) model for large scale heterogeneous representation learning. Specifically, we generate multi-semantic metapath-based random walks to construct the heterogeneous neighborhood to handle the unbalanced distributions and propose a unified framework for the embedding learning. We conduct systematical evaluations for the proposed framework on two challenging datasets: Amazon and Alibaba. The results empirically demonstrate that MSM can achieve relatively significant gains over previous state-of-arts on link prediction.
@article{arxiv.2007.11380,
title = {A Multi-Semantic Metapath Model for Large Scale Heterogeneous Network Representation Learning},
author = {Xuandong Zhao and Jinbao Xue and Jin Yu and Xi Li and Hongxia Yang},
journal= {arXiv preprint arXiv:2007.11380},
year = {2020}
}
Comments
Part of this work was carried out while the first author interned at Alibaba