Datasets:
Modalities:
Text
Formats:
json
Languages:
English
Size:
10K - 100K
Tags:
academic-knowledge-extraction
concept-path-mining
openalex
innovation-detection
scholarly-data
License:
metadata
language: en
license: apache-2.0
pretty_name: NSU Academic Concept Paths Dataset
tags:
- academic-knowledge-extraction
- concept-path-mining
- openalex
- innovation-detection
- scholarly-data
NSU Academic Concept Paths Dataset
This dataset supports the research presented in:
"Constraint-Driven Small Language Models Based on Agent and OpenAlex Knowledge Graph: Mining Conceptual Pathways and Discovering Innovation Points in Academic Papers"
by Ziye Xia and Sergei S. Ospichev (2025).
It contains curated academic data from Novosibirsk State University (NSU), annotated with structured concept paths and innovation points grounded in the OpenAlex knowledge graph.
π Files
train.json: Training set (structured instruction-tuning data for the 4-stage agent pipeline)val.json: Validation settest.json: Test set (includes human-annotated innovation points)concept_paths.json: Full list of 84,181 extracted concept pathsinnovation_annotations.json: 1,196 expert-validated innovation points
π Statistics
| Item | Count |
|---|---|
| Papers | 7,960 |
| Unique OpenAlex Concepts | 11,446 |
| Concept Paths | 84,181 |
| Innovation Annotations | 1,196 |
| Concept Associations (validated) | 127,203 |
π§ Data Format (Example from train.json)
Each sample follows an instruction-tuning format:
{
"instruction": "Extract concept pairs from the research methods section.",
"input": "<research_methods>... text ...</research_methods>",
"output": "[[\"Physics\", \"Superconductivity\"], [\"Materials Science\", \"High-Tc materials\"]]"
}