DBApr 8, 2025

Rosetta Statements: Simplifying FAIR Knowledge Graph Construction with a User-Centered Approach

arXiv:2407.200070.001 citations
AI Analysis45

This work addresses the high access barriers to knowledge graph and ontology use for domain experts by providing a user-centered modeling approach.

The Rosetta Statement approach simplifies FAIR knowledge graph construction by allowing domain experts to model English natural language statements instead of requiring prior knowledge in semantics and data modeling. Implemented in the Open Research Knowledge Graph (ORKG), it enables domain experts to define data schema patterns without semantic expertise, lowering entry barriers.

Machines need data and metadata to be machine-actionable and FAIR (findable, accessible, interoperable, reusable) to manage increasing data volumes. Knowledge graphs and ontologies are key to this, but their use is hampered by high access barriers due to required prior knowledge in semantics and data modelling. The Rosetta Statement approach proposes modeling English natural language statements instead of a mind-independent reality. We propose a metamodel for creating semantic schema patterns for simple statement types. The approach supports versioning of statements and provides a detailed editing history. Each Rosetta Statement pattern has a dynamic label for displaying statements as natural language sentences. Implemented in the Open Research Knowledge Graph (ORKG) as a use case, this approach allows domain experts to define data schema patterns without needing semantic knowledge. Future plans include combining Rosetta Statements with semantic units to organize ORKG into meaningful subgraphs, improving usability. A search interface for querying statements without needing SPARQL or Cypher knowledge is also planned, along with tools for data entry and display using Large Language Models. The Rosetta Statement metamodel supports a three-step knowledge graph construction procedure. Domain experts can model semantic content without support from ontology engineers by using Wikidata, lowering entry barriers and increasing cognitive interoperability. The second level involves mapping Wikidata terms to established ontologies, and the third step developing semantic graph patterns for reasoning, requiring collaboration with ontology engineers.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes