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OET

Ontology Enrichment from Texts (OET): A Biomedical Dataset for Concept Discovery and Placement

The repository provides scripts for data creation, with guideline to implement baseline methods for out-of-KB mention discovery and concept placement. The study is described in this work (link to arXiv, accepted for CIKM 2023).

Dataset

The dataset is available at Zenodo and its JSON keys are described in the dataset folder.

Data and processing sources

Before data creation, the below sources need to be downloaded.

The below tools and libraries are used.

Data creation scripts

The data creation scripts are available at data-construction folder, where run_preprocess_ents_and_data+new.sh provides an overall shell script that calls the other .py files.

Methods

Out-of-KB mention discovery

We used BLINKout with default parameters.

Concept placement

We used an edge-Bi-encoder, which adapts the original BLINK/BLINKout model by matching a mention to an edge <parent, child>.

Then after selecting top-k edges, an optional step is to choose the correct ones for the evaluation. We tested GPT-3.5 (gpt-3.5-turbo) via OpenAI API. Details of the prompt and implementation are available in baseline-methods/concept-placement folder.

Related project

See an example project processing the dataset at LM-ontology-concept-placement.

Acknowledgement