Neural Multi-hop Logical Query Answering with Concept-Level Answers

Venue: The Semantic Web – ISWC 2023

Authors: Zhenwei Tang, Shichao Pei, Xi Peng, Fuzhen Zhuang, Xiangliang Zhang, Robert Hoehndorf

Abstract

Neural multi-hop logical query answering ({LQA}) is a fundamental task to explore relational data such as knowledge graphs, which aims at answering multi-hop queries with logical operations based on distributed representations of queries and answers. Although previous {LQA} methods can give specific instance-level answers, they are not able to provide descriptive concept-level answers, where each concept is a description of a set of instances. Concept-level answers are more comprehensible to users and are of great usefulness in the field of applied ontology. In this work, we formulate the problem of {LQA} with concept-level answers ({LQAC}), solving which needs to address challenges in incorporating, representing, and operating on concepts. We propose an original solution for {LQAC}. Firstly, we incorporate description logic-based ontological axioms to provide the source of concepts. Then, we represent concepts and queries as fuzzy sets, i.e., sets whose elements have degrees of membership, to bridge concepts and queries with instances. Moreover, we design operators involving concepts on top of fuzzy set representation of concepts and queries for optimization and inference. Extensive experimental results on three real-world datasets demonstrate the effectiveness of our method for {LQAC}. In particular, we show that our method is promising in discovering complex logical biomedical facts.

Topics

neuro-symbolic-ai