--- license: mit language: - en tags: - OntoLearner - ontology-learning - education pretty_name: Education ---
OntoLearner

Education Domain Ontologies

## Overview The education domain encompasses ontologies that systematically represent and organize knowledge related to learning content, educational programs, competencies, and teaching resources. This domain plays a critical role in facilitating semantic interoperability and enhancing the precision of information retrieval and management within educational contexts. By providing a structured framework for the representation of educational concepts and relationships, it supports the development of intelligent systems that can effectively process and utilize educational data. ## Ontologies | Ontology ID | Full Name | Classes | Properties | Last Updated | |-------------|-----------|---------|------------|--------------| | BIBFRAME | Bibliographic Framework Ontology (BIBFRAME) | 212 | 215 | 2022-10-03| | Common | Common Ontology (Common) | 6 | 15 | None| | DoCO | Document Components Ontology (DoCO) | 137 | 7 | 2015-07-03| ## Dataset Files Each ontology directory contains the following files: 1. `.` - The original ontology file 2. `term_typings.json` - A Dataset of term-to-type mappings 3. `taxonomies.json` - Dataset of taxonomic relations 4. `non_taxonomic_relations.json` - Dataset of non-taxonomic relations 5. `.rst` - Documentation describing the ontology ## Usage These datasets are intended for ontology learning research and applications. Here's how to use them with OntoLearner: First of all, install the `OntoLearner` library via PiP: ```bash pip install ontolearner ``` **How to load an ontology or LLM4OL Paradigm tasks datasets?** ``` python from ontolearner import BIBFRAME ontology = BIBFRAME() # Load an ontology. ontology.load() # Load (or extract) LLMs4OL Paradigm tasks datasets data = ontology.extract() ``` **How use the loaded dataset for LLM4OL Paradigm task settings?** ``` python # Import core modules from the OntoLearner library from ontolearner import BIBFRAME, LearnerPipeline, train_test_split # Load the BIBFRAME ontology, which contains concepts related to wines, their properties, and categories ontology = BIBFRAME() ontology.load() # Load entities, types, and structured term annotations from the ontology data = ontology.extract() # Split into train and test sets train_data, test_data = train_test_split(data, test_size=0.2, random_state=42) # Initialize a multi-component learning pipeline (retriever + LLM) # This configuration enables a Retrieval-Augmented Generation (RAG) setup pipeline = LearnerPipeline( retriever_id='sentence-transformers/all-MiniLM-L6-v2', # Dense retriever model for nearest neighbor search llm_id='Qwen/Qwen2.5-0.5B-Instruct', # Lightweight instruction-tuned LLM for reasoning hf_token='...', # Hugging Face token for accessing gated models batch_size=32, # Batch size for training/prediction if supported top_k=5 # Number of top retrievals to include in RAG prompting ) # Run the pipeline: training, prediction, and evaluation in one call outputs = pipeline( train_data=train_data, test_data=test_data, evaluate=True, # Compute metrics like precision, recall, and F1 task='term-typing' # Specifies the task # Other options: "taxonomy-discovery" or "non-taxonomy-discovery" ) # Print final evaluation metrics print("Metrics:", outputs['metrics']) # Print the total time taken for the full pipeline execution print("Elapsed time:", outputs['elapsed_time']) # Print all outputs (including predictions) print(outputs) ``` For more detailed documentation, see the [![Documentation](https://img.shields.io/badge/Documentation-ontolearner.readthedocs.io-blue)](https://ontolearner.readthedocs.io) ## Citation If you find our work helpful, feel free to give us a cite. ```bibtex @inproceedings{babaei2023llms4ol, title={LLMs4OL: Large language models for ontology learning}, author={Babaei Giglou, Hamed and D’Souza, Jennifer and Auer, S{\"o}ren}, booktitle={International Semantic Web Conference}, pages={408--427}, year={2023}, organization={Springer} } ```