Uncertainty Management in the Construction of Knowledge Graphs: a Survey
Lucas Jarnac, Yoan Chabot, Miguel Couceiro

TL;DR
This survey reviews methods for managing uncertainty during knowledge graph construction, emphasizing automatic extraction, conflict resolution, and maintaining quality amidst noisy data sources.
Contribution
It provides a comprehensive overview of current approaches to handle uncertainty in knowledge graph construction and discusses future challenges and perspectives.
Findings
Survey of state-of-the-art uncertainty handling methods
Analysis of knowledge extraction and conflict resolution techniques
Discussion on future challenges in KG construction with uncertainty
Abstract
Knowledge Graphs (KGs) are a major asset for companies thanks to their great flexibility in data representation and their numerous applications, e.g., vocabulary sharing, Q/A or recommendation systems. To build a KG it is a common practice to rely on automatic methods for extracting knowledge from various heterogeneous sources. But in a noisy and uncertain world, knowledge may not be reliable and conflicts between data sources may occur. Integrating unreliable data would directly impact the use of the KG, therefore such conflicts must be resolved. This could be done manually by selecting the best data to integrate. This first approach is highly accurate, but costly and time-consuming. That is why recent efforts focus on automatic approaches, which represents a challenging task since it requires handling the uncertainty of extracted knowledge throughout its integration into the KG. We…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Data Quality and Management · Semantic Web and Ontologies
MethodsFocus
