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Main Authors: Wang, Shurong, Zhang, Yufei, Huang, Xuliang, Wang, Hongwei
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.09477
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author Wang, Shurong
Zhang, Yufei
Huang, Xuliang
Wang, Hongwei
author_facet Wang, Shurong
Zhang, Yufei
Huang, Xuliang
Wang, Hongwei
contents Knowledge graph embedding (KGE) has caught significant interest for its effectiveness in knowledge graph completion (KGC), specifically link prediction (LP), with recent KGE models cracking the LP benchmarks. Despite the rapidly growing literature, insufficient attention has been paid to the cooperation between humans and AI on KG. However, humans' capability to analyze graphs conceptually may further improve the efficacy of KGE models with semantic information. To this effect, we carefully designed a human-AI team (HAIT) system dubbed KG-HAIT, which harnesses the human insights on KG by leveraging fully human-designed ad-hoc dynamic programming (DP) on KG to produce human insightful feature (HIF) vectors that capture the subgraph structural feature and semantic similarities. By integrating HIF vectors into the training of KGE models, notable improvements are observed across various benchmarks and metrics, accompanied by accelerated model convergence. Our results underscore the effectiveness of human-designed DP in the task of LP, emphasizing the pivotal role of collaboration between humans and AI on KG. We open avenues for further exploration and innovation through KG-HAIT, paving the way towards more effective and insightful KG analysis techniques.
format Preprint
id arxiv_https___arxiv_org_abs_2405_09477
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Harmonizing Human Insights and AI Precision: Hand in Hand for Advancing Knowledge Graph Task
Wang, Shurong
Zhang, Yufei
Huang, Xuliang
Wang, Hongwei
Machine Learning
Artificial Intelligence
Knowledge graph embedding (KGE) has caught significant interest for its effectiveness in knowledge graph completion (KGC), specifically link prediction (LP), with recent KGE models cracking the LP benchmarks. Despite the rapidly growing literature, insufficient attention has been paid to the cooperation between humans and AI on KG. However, humans' capability to analyze graphs conceptually may further improve the efficacy of KGE models with semantic information. To this effect, we carefully designed a human-AI team (HAIT) system dubbed KG-HAIT, which harnesses the human insights on KG by leveraging fully human-designed ad-hoc dynamic programming (DP) on KG to produce human insightful feature (HIF) vectors that capture the subgraph structural feature and semantic similarities. By integrating HIF vectors into the training of KGE models, notable improvements are observed across various benchmarks and metrics, accompanied by accelerated model convergence. Our results underscore the effectiveness of human-designed DP in the task of LP, emphasizing the pivotal role of collaboration between humans and AI on KG. We open avenues for further exploration and innovation through KG-HAIT, paving the way towards more effective and insightful KG analysis techniques.
title Harmonizing Human Insights and AI Precision: Hand in Hand for Advancing Knowledge Graph Task
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2405.09477