Gold: A Global and Local-aware Denoising Framework for Commonsense Knowledge Graph Noise Detection

Abstract

We propose Gold, a denoising framework for CSKGs that incorporates entity semantic information, global rules, and local structural information from the CSKG. Experiment results demonstrate that Gold outperforms all baseline methods in noise detection tasks on synthetic noisy CSKG benchmarks. Furthermore, we show that denoising a real-world CSKG is effective and even benefits the downstream zero-shot commonsense question-answering task.

Publication
In Findings of 2023 Conference on Empirical Methods in Natural Language Processing (EMNLP)
Zheye Deng
Zheye Deng
Ph.D. Student

My research interests include commonsense knowledge graph and neural graph database.