Relational Neural Markov Random Fields

10/18/2021
by   Yuqiao Chen, et al.
0

Statistical Relational Learning (SRL) models have attracted significant attention due to their ability to model complex data while handling uncertainty. However, most of these models have been limited to discrete domains due to their limited potential functions. We introduce Relational Neural Markov Random Fields (RN-MRFs) which allow for handling of complex relational hybrid domains. The key advantage of our model is that it makes minimal data distributional assumptions and can seamlessly allow for human knowledge through potentials or relational rules. We propose a maximum pseudolikelihood estimation-based learning algorithm with importance sampling for training the neural potential parameters. Our empirical evaluations across diverse domains such as image processing and relational object mapping, clearly demonstrate its effectiveness against non-neural counterparts.

READ FULL TEXT
research
08/29/2013

Linear and Parallel Learning of Markov Random Fields

We introduce a new embarrassingly parallel parameter learning algorithm ...
research
08/28/2019

Neural Networks for Relational Data

While deep networks have been enormously successful over the last decade...
research
05/15/2019

GMNN: Graph Markov Neural Networks

This paper studies semi-supervised object classification in relational d...
research
07/03/2018

Structure Learning of Markov Random Fields through Grow-Shrink Maximum Pseudolikelihood Estimation

Learning the structure of Markov random fields (MRFs) plays an important...
research
08/29/2011

Structure Selection from Streaming Relational Data

Statistical relational learning techniques have been successfully applie...
research
01/23/2020

Learning Distributional Programs for Relational Autocompletion

Relational autocompletion is the problem of automatically filling out so...
research
04/17/2019

Bottleneck potentials in Markov Random Fields

We consider general discrete Markov Random Fields(MRFs) with additional ...

Please sign up or login with your details

Forgot password? Click here to reset