Saved in:
Bibliographic Details
Main Authors: Jaimini, Utkarshani, Henson, Cory, Sheth, Amit
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.14679
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909354395959296
author Jaimini, Utkarshani
Henson, Cory
Sheth, Amit
author_facet Jaimini, Utkarshani
Henson, Cory
Sheth, Amit
contents Causal networks are often incomplete with missing causal links. This is due to various issues, such as missing observation data. Recent approaches to the issue of incomplete causal networks have used knowledge graph link prediction methods to find the missing links. In the causal link A causes B causes C, the influence of A to C is influenced by B which is known as a mediator. Existing approaches using knowledge graph link prediction do not consider these mediated causal links. This paper presents HyperCausalLP, an approach designed to find missing causal links within a causal network with the help of mediator links. The problem of missing links is formulated as a hyper-relational knowledge graph completion. The approach uses a knowledge graph link prediction model trained on a hyper-relational knowledge graph with the mediators. The approach is evaluated on a causal benchmark dataset, CLEVRER-Humans. Results show that the inclusion of knowledge about mediators in causal link prediction using hyper-relational knowledge graph improves the performance on an average by 5.94% mean reciprocal rank.
format Preprint
id arxiv_https___arxiv_org_abs_2410_14679
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle HyperCausalLP: Causal Link Prediction using Hyper-Relational Knowledge Graph
Jaimini, Utkarshani
Henson, Cory
Sheth, Amit
Artificial Intelligence
Causal networks are often incomplete with missing causal links. This is due to various issues, such as missing observation data. Recent approaches to the issue of incomplete causal networks have used knowledge graph link prediction methods to find the missing links. In the causal link A causes B causes C, the influence of A to C is influenced by B which is known as a mediator. Existing approaches using knowledge graph link prediction do not consider these mediated causal links. This paper presents HyperCausalLP, an approach designed to find missing causal links within a causal network with the help of mediator links. The problem of missing links is formulated as a hyper-relational knowledge graph completion. The approach uses a knowledge graph link prediction model trained on a hyper-relational knowledge graph with the mediators. The approach is evaluated on a causal benchmark dataset, CLEVRER-Humans. Results show that the inclusion of knowledge about mediators in causal link prediction using hyper-relational knowledge graph improves the performance on an average by 5.94% mean reciprocal rank.
title HyperCausalLP: Causal Link Prediction using Hyper-Relational Knowledge Graph
topic Artificial Intelligence
url https://arxiv.org/abs/2410.14679