A Method for Learning Large-Scale Computational Construction Grammars from Semantically Annotated Corpora
arXiv cs.CL / 3/16/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The paper introduces a method for learning large-scale, broad-coverage construction grammars from corpora annotated with constituency structure and semantic frames.
- The learned grammars form networks of tens of thousands of constructions within the Fluid Construction Grammar framework, enabling frame-semantic analysis of open-domain text.
- The work demonstrates the scalability of usage-based construction grammar approaches and provides practical resources for studying English argument structure in broad-coverage corpora.
- The approach yields rich data on syntactico-semantic usage patterns captured in the training data, supporting downstream linguistic analysis and applications.
Related Articles
The Honest Guide to AI Writing Tools in 2026 (What Actually Works)
Dev.to
Next-Generation LLM Inference Technology: From Flash-MoE to Gemini Flash-Lite, and Local GPU Utilization
Dev.to
The Wave of Open-Source AI and Investment in Security: Trends from Qwen, MS, and Google
Dev.to
How I built a 4-product AI income stack in 4 months (the honest version)
Dev.to
I stopped writing AI prompts from scratch. Here is the system I built instead.
Dev.to