name: FoodOn's Subsumption Hierarchy (TBox)
description: >
This dataset is a collection of Mixed-hop Prediction datasets created from
FoodOn's subsumption hierarchy (TBox) for evaluating hierarchy embedding
models.
license: apache-2.0
language:
- en
multilinguality:
- monolingual
size_categories:
- 1M<n<10M
task_categories:
- feature-extraction
- sentence-similarity
pretty_name: FoodOn
tags:
- hierarchy-transformers
- sentence-transformers
configs:
- config_name: MixedHop-RandomNegatives-Triplets
description: >
A dataset for Mixed-hop Prediction with random negatives; samples
formatted as triplets.
data_files:
- split: train
path: MixedHop-RandomNegatives-Triplets/train*
- split: val
path: MixedHop-RandomNegatives-Triplets/val*
- split: test
path: MixedHop-RandomNegatives-Triplets/test*
- config_name: MixedHop-HardNegatives-Triplets
description: >
A dataset for Mixed-hop Prediction with hard negatives; samples formatted
as triplets.
data_files:
- split: train
path: MixedHop-HardNegatives-Triplets/train*
- split: val
path: MixedHop-HardNegatives-Triplets/val*
- split: test
path: MixedHop-HardNegatives-Triplets/test*
- config_name: MixedHop-RandomNegatives-Pairs
description: >
A dataset for Mixed-hop Prediction with random negatives; samples
formatted as pairs.
data_files:
- split: train
path: MixedHop-RandomNegatives-Pairs/train*
- split: val
path: MixedHop-RandomNegatives-Pairs/val*
- split: test
path: MixedHop-RandomNegatives-Pairs/test*
- config_name: MixedHop-HardNegatives-Pairs
description: >
A dataset for Mixed-hop Prediction with hard negatives; samples formatted
as pairs.
data_files:
- split: train
path: MixedHop-HardNegatives-Pairs/train*
- split: val
path: MixedHop-HardNegatives-Pairs/val*
- split: test
path: MixedHop-HardNegatives-Pairs/test*
Dataset Card for FoodOn
This dataset is a collection of Mixed-hop Prediction datasets created from FoodOn's subsumption hierarchy (TBox) for evaluating hierarchy embedding models.
- Mixed-hop Prediction: This task aims to evaluate the model’s capability in determining the existence of subsumption relationships between arbitrary entity pairs, where the entities are not necessarily seen during training. The transfer setting of this task involves training models on asserted training edges of one hierarchy testing on arbitrary entity pairs of another.
See our published paper for more detail.
Links
- GitHub Repository: https://github.com/KRR-Oxford/HierarchyTransformers
- Huggingface Page: https://huggingface.co/Hierarchy-Transformers
- Zenodo Release: https://doi.org/10.5281/zenodo.10511042
- Paper: Language Models as Hierarchy Encoders (NeurIPS 2024).
The information of original entity IDs is not available in the Huggingface release; To map entities back to their original hierarchies, refer to this Zenodo release.
Dataset Structure
Each subset in this dataset follows the naming convention TaskType-NegativeType-SampleStructure
:
TaskType
: EitherMultiHop
orMixedHop
, indicating the type of hierarchy evaluation task.
In this dataset, only
MixedHop
is available.
NegativeType
: EitherRandomNegatives
orHardNegatives
, specifying the strategy used for negative sampling.SampleStructure
: EitherTriplets
orPairs
, indicating the format of the samples.- In
Triplets
, each sample is structured as(child, parent, negative)
. - In
Pairs
, each sample is a labelled pair(child, parent, label)
, wherelabel=1
denotes a positive subsumption andlabel=0
denotes a negative subsumption.
- In
For example, to load a subset for the Mixed-hop Prediction task with random negatives and samples presented as triplets, we can use the following command:
from datasets import load_dataset
dataset = load_dataset("Hierarchy-Transformers/FoodOn", "MixedHop-RandomNegatives-Triplets")
Dataset Usage
For evaluation, the
Pairs
sample structure should be adopted, as it allows for the computation of Precision, Recall, and F1 scores.For training, the choice between
Pairs
,Triplets
, or more complex sample structures depends on the model's design and specific requirements.
Citation
The relevant paper has been accepted at NeurIPS 2024 (to appear).
@article{he2024language,
title={Language models as hierarchy encoders},
author={He, Yuan and Yuan, Zhangdie and Chen, Jiaoyan and Horrocks, Ian},
journal={arXiv preprint arXiv:2401.11374},
year={2024}
}
Contact
Yuan He (yuan.he(at)cs.ox.ac.uk
)