Summary
In MOKA, we will design and implement methods for managing the evolution of large and dynamic knowledge graphs (KG).
Currently, KG are getting much attention from both industry and academia because they have properties that support the design and
development of more intelligent and intelligible systems by connecting and structuring knowledge, ensuring semantic
interoperability between information systems and providing richer content for automatic reasoning. However, one of the most widely
agreed-upon problems experienced by data scientists and knowledge engineers is the maintenance of such KG over time. Since KG
model the knowledge of a given domain, they have to be frequently updated to reflect the evolution of that domain which demand
significant effort from experts and once updated changes are lost which leads to a general impoverishment of knowledge over time.
To do so, our methods and tools will allow to (i) identify and characterize changes that occurs in KG when the domain evolves which
will significantly reduce the efforts of domain experts in the KG maintenance tasks and (ii) define a mechanism to represent the
evolution of a domain within a so-called Historical Knowledge Graph (HKG) that will allow users having a clear and deep
understanding of the evolution of the domain knowledge over time. The proposed methods and tools will be evaluated on the KG of
the Open Research Knowledge Graph initiative and the data of the space domain. We will have a significant impact on scientific,
technological, economic and societal aspects. This will be made possible thanks to the proposed dissemination, exploitation and
communication plans aimed at a large audience that will facilitate the development of the career of the researcher.
Currently, KG are getting much attention from both industry and academia because they have properties that support the design and
development of more intelligent and intelligible systems by connecting and structuring knowledge, ensuring semantic
interoperability between information systems and providing richer content for automatic reasoning. However, one of the most widely
agreed-upon problems experienced by data scientists and knowledge engineers is the maintenance of such KG over time. Since KG
model the knowledge of a given domain, they have to be frequently updated to reflect the evolution of that domain which demand
significant effort from experts and once updated changes are lost which leads to a general impoverishment of knowledge over time.
To do so, our methods and tools will allow to (i) identify and characterize changes that occurs in KG when the domain evolves which
will significantly reduce the efforts of domain experts in the KG maintenance tasks and (ii) define a mechanism to represent the
evolution of a domain within a so-called Historical Knowledge Graph (HKG) that will allow users having a clear and deep
understanding of the evolution of the domain knowledge over time. The proposed methods and tools will be evaluated on the KG of
the Open Research Knowledge Graph initiative and the data of the space domain. We will have a significant impact on scientific,
technological, economic and societal aspects. This will be made possible thanks to the proposed dissemination, exploitation and
communication plans aimed at a large audience that will facilitate the development of the career of the researcher.
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More information & hyperlinks
Web resources: | https://cordis.europa.eu/project/id/101102337 |
Start date: | 01-02-2024 |
End date: | 31-01-2026 |
Total budget - Public funding: | - 191 760,00 Euro |
Cordis data
Original description
In MOKA, we will design and implement methods for managing the evolution of large and dynamic knowledge graphs (KG).Currently, KG are getting much attention from both industry and academia because they have properties that support the design and
development of more intelligent and intelligible systems by connecting and structuring knowledge, ensuring semantic
interoperability between information systems and providing richer content for automatic reasoning. However, one of the most widely
agreed-upon problems experienced by data scientists and knowledge engineers is the maintenance of such KG over time. Since KG
model the knowledge of a given domain, they have to be frequently updated to reflect the evolution of that domain which demand
significant effort from experts and once updated changes are lost which leads to a general impoverishment of knowledge over time.
To do so, our methods and tools will allow to (i) identify and characterize changes that occurs in KG when the domain evolves which
will significantly reduce the efforts of domain experts in the KG maintenance tasks and (ii) define a mechanism to represent the
evolution of a domain within a so-called Historical Knowledge Graph (HKG) that will allow users having a clear and deep
understanding of the evolution of the domain knowledge over time. The proposed methods and tools will be evaluated on the KG of
the Open Research Knowledge Graph initiative and the data of the space domain. We will have a significant impact on scientific,
technological, economic and societal aspects. This will be made possible thanks to the proposed dissemination, exploitation and
communication plans aimed at a large audience that will facilitate the development of the career of the researcher.
Status
SIGNEDCall topic
HORIZON-MSCA-2022-PF-01-01Update Date
12-03-2024
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