Author Name Disambiguation on Heterogeneous Information Network with Adversarial Representation Learning

02/23/2020
by   Haiwen Wang, et al.
0

Author name ambiguity causes inadequacy and inconvenience in academic information retrieval, which raises the necessity of author name disambiguation (AND). Existing AND methods can be divided into two categories: the models focusing on content information to distinguish whether two papers are written by the same author, the models focusing on relation information to represent information as edges on the network and to quantify the similarity among papers. However, the former requires adequate labeled samples and informative negative samples, and are also ineffective in measuring the high-order connections among papers, while the latter needs complicated feature engineering or supervision to construct the network. We propose a novel generative adversarial framework to grow the two categories of models together: (i) the discriminative module distinguishes whether two papers are from the same author, and (ii) the generative module selects possibly homogeneous papers directly from the heterogeneous information network, which eliminates the complicated feature engineering. In such a way, the discriminative module guides the generative module to select homogeneous papers, and the generative module generates high-quality negative samples to train the discriminative module to make it aware of high-order connections among papers. Furthermore, a self-training strategy for the discriminative module and a random walk based generating algorithm are designed to make the training stable and efficient. Extensive experiments on two real-world AND benchmarks demonstrate that our model provides significant performance improvement over the state-of-the-art methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/30/2020

Pairwise Learning for Name Disambiguation in Large-Scale Heterogeneous Academic Networks

Name disambiguation aims to identify unique authors with the same name. ...
research
10/03/2018

h_α: An index to quantify an individual's scientific leadership

The α person is the dominant person in a group. We define the α-author o...
research
05/22/2021

A Robust and Generalized Framework for Adversarial Graph Embedding

Graph embedding is essential for graph mining tasks. With the prevalence...
research
11/26/2019

BHIN2vec: Balancing the Type of Relation in Heterogeneous Information Network

The goal of network embedding is to transform nodes in a network to a lo...
research
02/18/2020

High-Order Paired-ASPP Networks for Semantic Segmenation

Current semantic segmentation models only exploit first-order statistics...
research
05/29/2020

High-order structure preserving graph neural network for few-shot learning

Few-shot learning can find the latent structure information between the ...
research
11/22/2017

GraphGAN: Graph Representation Learning with Generative Adversarial Nets

The goal of graph representation learning is to embed each vertex in a g...

Please sign up or login with your details

Forgot password? Click here to reset