The Semantic Ladder: A Framework for Progressive Formalization of Natural Language Content for Knowledge Graphs and AI Systems
arXiv cs.CL / 3/24/2026
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Key Points
- The paper introduces the “Semantic Ladder,” an architectural framework for progressively formalizing natural-language content into machine-actionable knowledge graph and AI-ready representations.
- It organizes knowledge representations into levels of increasing semantic explicitness, from raw text snippets through ontology-based models to higher-order logical formalisms.
- The framework defines transformations between these levels to enable semantic enrichment, statement structuring, and logical modeling while maintaining semantic continuity and traceability.
- It claims the approach reduces the up-front semantic parsing burden and supports incremental construction of interoperable semantic knowledge spaces.
- It also targets integration of heterogeneous inputs, including natural language, structured semantic models, and vector-based embeddings, to better reconcile NLP and formal reasoning needs.
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