Knowledge Generation – Variational Bayes on Knowledge Graphs

01/21/2021
by   Florian Wolf, et al.
0

This thesis is a proof of concept for the potential of Variational Auto-Encoder (VAE) on representation learning of real-world Knowledge Graphs (KG). Inspired by successful approaches to the generation of molecular graphs, we evaluate the capabilities of our model, the Relational Graph Variational Auto-Encoder (RGVAE). The impact of the modular hyperparameter choices, encoding through graph convolutions, graph matching and latent space prior, is compared. The RGVAE is first evaluated on link prediction. The mean reciprocal rank (MRR) scores on the two datasets FB15K-237 and WN18RR are compared to the embedding-based model DistMult. A variational DistMult and a RGVAE without latent space prior constraint are implemented as control models. The results show that between different settings, the RGVAE with relaxed latent space, scores highest on both datasets, yet does not outperform the DistMult. Further, we investigate the latent space in a twofold experiment: first, linear interpolation between the latent representation of two triples, then the exploration of each latent dimension in a 95% confidence interval. Both interpolations show that the RGVAE learns to reconstruct the adjacency matrix but fails to disentangle. For the last experiment we introduce a new validation method for the FB15K-237 data set. The relation type-constrains of generated triples are filtered and matched with entity types. The observed rate of valid generated triples is insignificantly higher than the random threshold. All generated and valid triples are unseen. A comparison between different latent space priors, using the δ-VAE method, reveals a decoder collapse. Finally we analyze the limiting factors of our approach compared to molecule generation and propose solutions for the decoder collapse and successful representation learning of multi-relational KGs.

READ FULL TEXT

page 16

page 39

research
06/12/2020

Disentangled Representation Learning and Generation with Manifold Optimization

Disentanglement is an enjoyable property in representation learning whic...
research
10/13/2019

Bayesian Neural Decoding Using A Diversity-Encouraging Latent Representation Learning Method

It is well established that temporal organization is critical to memory,...
research
10/18/2020

Variational Capsule Encoder

We propose a novel capsule network based variational encoder architectur...
research
06/22/2021

A Deep Latent Space Model for Graph Representation Learning

Graph representation learning is a fundamental problem for modeling rela...
research
03/03/2019

Variational Auto-Decoder: Neural Generative Modeling from Partial Data

Learning a generative model from partial data (data with missingness) is...
research
06/30/2021

Relational VAE: A Continuous Latent Variable Model for Graph Structured Data

Graph Networks (GNs) enable the fusion of prior knowledge and relational...
research
06/15/2023

Deep learning based Meta-modeling for Multi-objective Technology Optimization of Electrical Machines

Optimization of rotating electrical machines is both time- and computati...

Please sign up or login with your details

Forgot password? Click here to reset