LLMs4OL

** LLMs4OL Paradigm Task A: Term Typing Task B: Type Taxonomy Discovery Task C: Type Non-Taxonomic Relation Extraction Finetuning Task A Detailed Results Task B Detailed Results Task C Detailed Results Task A Datasets Task B Datasets Task C Datasets Finetuning Datasets **

Finetuning Datasets

For task A for each class, we choose 8 samples per class from the train set. As well for task B and C, we have only considered those train that has been split with integration with task A. The obtained stat for GeoNames (tasks A, and B), WN18RR (task A), UMLS (NCI only for Task A, B, and C), and Schema.OrG (task B) is presented as followings:

Dataset Supported Task(s) # of samples
WN18RR A 32
GeoNames A,B 5102
NCI A, B, C 911
Schema.Org B 1068

Each dataset format has been changed to support our requirements for the training. Also, it is worth mentioning that we applied negative sampling for datasets but we ended-up up NOT using them during training process.