English

Relevant Entity Selection: Knowledge Graph Bootstrapping via Zero-Shot Analogical Pruning

Artificial Intelligence 2023-08-17 v2 Machine Learning

Abstract

Knowledge Graph Construction (KGC) can be seen as an iterative process starting from a high quality nucleus that is refined by knowledge extraction approaches in a virtuous loop. Such a nucleus can be obtained from knowledge existing in an open KG like Wikidata. However, due to the size of such generic KGs, integrating them as a whole may entail irrelevant content and scalability issues. We propose an analogy-based approach that starts from seed entities of interest in a generic KG, and keeps or prunes their neighboring entities. We evaluate our approach on Wikidata through two manually labeled datasets that contain either domain-homogeneous or -heterogeneous seed entities. We empirically show that our analogy-based approach outperforms LSTM, Random Forest, SVM, and MLP, with a drastically lower number of parameters. We also evaluate its generalization potential in a transfer learning setting. These results advocate for the further integration of analogy-based inference in tasks related to the KG lifecycle.

Keywords

Cite

@article{arxiv.2306.16296,
  title  = {Relevant Entity Selection: Knowledge Graph Bootstrapping via Zero-Shot Analogical Pruning},
  author = {Lucas Jarnac and Miguel Couceiro and Pierre Monnin},
  journal= {arXiv preprint arXiv:2306.16296},
  year   = {2023}
}
R2 v1 2026-06-28T11:16:58.618Z