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Main Authors: Nentidis, Anastasios, Akasiadis, Charilaos, Charalambidis, Angelos, Artikis, Alexander
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.19023
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author Nentidis, Anastasios
Akasiadis, Charilaos
Charalambidis, Angelos
Artikis, Alexander
author_facet Nentidis, Anastasios
Akasiadis, Charilaos
Charalambidis, Angelos
Artikis, Alexander
contents In Knowledge Graphs (KGs), where the schema of the data is usually defined by particular ontologies, reasoning is a necessity to perform a range of tasks, such as retrieval of information, question answering, and the derivation of new knowledge. However, information to populate KGs is often extracted (semi-) automatically from natural language resources, or by integrating datasets that follow different semantic schemas, resulting in KG inconsistency. This, however, hinders the process of reasoning. In this survey, we focus on how to perform reasoning on inconsistent KGs, by analyzing the state of the art towards three complementary directions: a) the detection of the parts of the KG that cause the inconsistency, b) the fixing of an inconsistent KG to render it consistent, and c) the inconsistency-tolerant reasoning. We discuss existing work from a range of relevant fields focusing on how, and in which cases they are related to the above directions. We also highlight persisting challenges and future directions.
format Preprint
id arxiv_https___arxiv_org_abs_2502_19023
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Dealing with Inconsistency for Reasoning over Knowledge Graphs: A Survey
Nentidis, Anastasios
Akasiadis, Charilaos
Charalambidis, Angelos
Artikis, Alexander
Artificial Intelligence
In Knowledge Graphs (KGs), where the schema of the data is usually defined by particular ontologies, reasoning is a necessity to perform a range of tasks, such as retrieval of information, question answering, and the derivation of new knowledge. However, information to populate KGs is often extracted (semi-) automatically from natural language resources, or by integrating datasets that follow different semantic schemas, resulting in KG inconsistency. This, however, hinders the process of reasoning. In this survey, we focus on how to perform reasoning on inconsistent KGs, by analyzing the state of the art towards three complementary directions: a) the detection of the parts of the KG that cause the inconsistency, b) the fixing of an inconsistent KG to render it consistent, and c) the inconsistency-tolerant reasoning. We discuss existing work from a range of relevant fields focusing on how, and in which cases they are related to the above directions. We also highlight persisting challenges and future directions.
title Dealing with Inconsistency for Reasoning over Knowledge Graphs: A Survey
topic Artificial Intelligence
url https://arxiv.org/abs/2502.19023