On a Generalized Framework for Time-Aware Knowledge Graphs
- URL: http://arxiv.org/abs/2207.09964v1
- Date: Wed, 20 Jul 2022 15:14:46 GMT
- Title: On a Generalized Framework for Time-Aware Knowledge Graphs
- Authors: Franz Krause, Tobias Weller, Heiko Paulheim
- Abstract summary: This paper aims to provide a short but well-defined overview of time-aware knowledge graph extensions.
Knowledge graphs have emerged as an effective tool for managing and standardizing semistructured domain knowledge.
- Score: 3.9318191265352196
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Knowledge graphs have emerged as an effective tool for managing and
standardizing semistructured domain knowledge in a human- and
machine-interpretable way. In terms of graph-based domain applications, such as
embeddings and graph neural networks, current research is increasingly taking
into account the time-related evolution of the information encoded within a
graph. Algorithms and models for stationary and static knowledge graphs are
extended to make them accessible for time-aware domains, where time-awareness
can be interpreted in different ways. In particular, a distinction needs to be
made between the validity period and the traceability of facts as objectives of
time-related knowledge graph extensions. In this context, terms and definitions
such as dynamic and temporal are often used inconsistently or interchangeably
in the literature. Therefore, with this paper we aim to provide a short but
well-defined overview of time-aware knowledge graph extensions and thus
faciliate future research in this field as well.
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