SOTAVerified

PRUNE: Preserving Proximity and Global Ranking for Network Embedding

2017-12-01NeurIPS 2017Code Available0· sign in to hype

Yi-An Lai, Chin-Chi Hsu, Wen Hao Chen, Mi-Yen Yeh, Shou-De Lin

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We investigate an unsupervised generative approach for network embedding. A multi-task Siamese neural network structure is formulated to connect embedding vectors and our objective to preserve the global node ranking and local proximity of nodes. We provide deeper analysis to connect the proposed proximity objective to link prediction and community detection in the network. We show our model can satisfy the following design properties: scalability, asymmetry, unity and simplicity. Experiment results not only verify the above design properties but also demonstrate the superior performance in learning-to-rank, classification, regression, and link prediction tasks.

Tasks

Reproductions