Ensemble Node Embeddings using Tensor Decomposition: A Case-Study on DeepWalk

08/17/2020
by   Jia Chen, et al.
3

Node embeddings have been attracting increasing attention during the past years. In this context, we propose a new ensemble node embedding approach, called TenSemble2Vec, by first generating multiple embeddings using the existing techniques and taking them as multiview data input of the state-of-art tensor decomposition model namely PARAFAC2 to learn the shared lower-dimensional representations of the nodes. Contrary to other embedding methods, our TenSemble2Vec takes advantage of the complementary information from different methods or the same method with different hyper-parameters, which bypasses the challenge of choosing models. Extensive tests using real-world data validates the efficiency of the proposed method.

READ FULL TEXT

page 2

page 3

research
11/12/2019

A Capsule Network-based Model for Learning Node Embeddings

In this paper, we focus on learning low-dimensional embeddings of entity...
research
11/05/2020

Adversarial Context Aware Network Embeddings for Textual Networks

Representation learning of textual networks poses a significant challeng...
research
05/25/2018

struc2gauss: Structure Preserving Network Embedding via Gaussian Embedding

Network embedding (NE) is playing a principal role in network mining, du...
research
03/03/2023

RAFEN – Regularized Alignment Framework for Embeddings of Nodes

Learning representations of nodes has been a crucial area of the graph m...
research
10/13/2021

SSSNET: Semi-Supervised Signed Network Clustering

Node embeddings are a powerful tool in the analysis of networks; yet, th...
research
05/29/2020

A Process for the Evaluation of Node Embedding Methods in the Context of Node Classification

Node embedding methods find latent lower-dimensional representations whi...
research
02/22/2017

SIGNet: Scalable Embeddings for Signed Networks

Recent successes in word embedding and document embedding have motivated...

Please sign up or login with your details

Forgot password? Click here to reset