Local Neighbor Propagation Embedding

06/29/2020
by   Shenglan Liu, et al.
0

Manifold Learning occupies a vital role in the field of nonlinear dimensionality reduction and its ideas also serve for other relevant methods. Graph-based methods such as Graph Convolutional Networks (GCN) show ideas in common with manifold learning, although they belong to different fields. Inspired by GCN, we introduce neighbor propagation into LLE and propose Local Neighbor Propagation Embedding (LNPE). With linear computational complexity increase compared with LLE, LNPE enhances the local connections and interactions between neighborhoods by extending 1-hop neighbors into n-hop neighbors. The experimental results show that LNPE could obtain more faithful and robust embeddings with better topological and geometrical properties.

READ FULL TEXT
research
03/30/2022

Neighbor Enhanced Graph Convolutional Networks for Node Classification and Recommendation

The recently proposed Graph Convolutional Networks (GCNs) have achieved ...
research
10/29/2017

Stochastic Training of Graph Convolutional Networks

Graph convolutional networks (GCNs) are powerful deep neural networks fo...
research
10/14/2021

SoGCN: Second-Order Graph Convolutional Networks

Graph Convolutional Networks (GCN) with multi-hop aggregation is more ex...
research
11/01/2021

RMNA: A Neighbor Aggregation-Based Knowledge Graph Representation Learning Model Using Rule Mining

Although the state-of-the-art traditional representation learning (TRL) ...
research
09/16/2019

Hierarchic Neighbors Embedding

Manifold learning now plays a very important role in machine learning an...
research
07/06/2020

GCN for HIN via Implicit Utilization of Attention and Meta-paths

Heterogeneous information network (HIN) embedding, aiming to map the str...
research
12/02/2022

Exploring Faithful Rationale for Multi-hop Fact Verification via Salience-Aware Graph Learning

The opaqueness of the multi-hop fact verification model imposes imperati...

Please sign up or login with your details

Forgot password? Click here to reset