--- license: mit pipeline_tag: graph-ml tags: - graphs - ultra - knowledge graph --- ## Description ULTRA is a foundation model for knowledge graph (KG) reasoning. A single pre-trained ULTRA model performs link prediction tasks on **any** multi-relational graph with any entity / relation vocabulary. Performance-wise averaged on 50+ KGs, a single pre-trained ULTRA model is better in the **0-shot** inference mode than many SOTA models trained specifically on each graph. Following the pretrain-finetune paradigm of foundation models, you can run a pre-trained ULTRA checkpoint **immediately in the zero-shot manner** on any graph as well as **use more fine-tuning**. ULTRA provides **unified, learnable, transferable** representations for any KG. Under the hood, ULTRA employs graph neural networks and modified versions of NBFNet. ULTRA does not learn any entity and relation embeddings specific to a downstream graph but instead obtains relative relation representations based on interactions between relations. arxiv: https://arxiv.org/abs/2310.04562 GitHub: https://github.com/DeepGraphLearning/ULTRA ## Checkpoints Here on HuggingFace, we provide 3 pre-trained ULTRA checkpoints (all ~169k params) varying by the amount of pre-training data. | Model | Training KGs | | ------| --------------| | [ultra_3g](https://huggingface.co./mgalkin/ultra_3g) | 3 graphs | | [ultra_4g](https://huggingface.co./mgalkin/ultra_4g) | 4 graphs | | [ultra_50g](https://huggingface.co./mgalkin/ultra_50g) | 50 graphs | * [ultra_3g](https://huggingface.co./mgalkin/ultra_3g) and [ultra_4g](https://huggingface.co./mgalkin/ultra_4g) are the PyG models reported in the github repo; * [ultra_50g](https://huggingface.co./mgalkin/ultra_50g) is a new ULTRA checkpoint pre-trained on 50 different KGs (transductive and inductive) for 1M steps to maximize the performance on any unseen downstream KG. ## ⚡️ Your Superpowers ULTRA performs **link prediction** (KG completion aka reasoning): given a query `(head, relation, ?)`, it ranks all nodes in the graph as potential `tails`. 1. Install the dependencies as listed in the Installation instructions on the [GitHub repo](https://github.com/DeepGraphLearning/ULTRA#installation). 2. Clone this model repo to find the `UltraForKnowledgeGraphReasoning` class in `modeling.py` and load the checkpoint (all the necessary model code is in this model repo as well). * Run **zero-shot inference** on any graph: ```python from modeling import UltraForKnowledgeGraphReasoning from ultra.datasets import CoDExSmall from ultra.eval import test model = UltraForKnowledgeGraphReasoning.from_pretrained("mgalkin/ultra_50g") dataset = CoDExSmall(root="./datasets/") test(model, mode="test", dataset=dataset, gpus=None) # Expected results for ULTRA 50g # mrr: 0.498 # hits@10: 0.685 ``` Or with `AutoModel`: ```python from transformers import AutoModel from ultra.datasets import CoDExSmall from ultra.eval import test model = AutoModel.from_pretrained("mgalkin/ultra_50g", trust_remote_code=True) dataset = CoDExSmall(root="./datasets/") test(model, mode="test", dataset=dataset, gpus=None) # Expected results for ULTRA 50g # mrr: 0.498 # hits@10: 0.685 ``` * You can also **fine-tune** ULTRA on each graph, please refer to the [github repo](https://github.com/DeepGraphLearning/ULTRA#run-inference-and-fine-tuning) for more details on training / fine-tuning * The model code contains 57 different KGs, please refer to the [github repo](https://github.com/DeepGraphLearning/ULTRA#datasets) for more details on what's available. ## Performance **Averaged zero-shot performance of ultra-3g and ultra-4g**
Model Inductive (e) (18 graphs) Inductive (e,r) (23 graphs) Transductive (16 graphs)
Avg MRR Avg Hits@10 Avg MRR Avg Hits@10 Avg MRR Avg Hits@10
ULTRA (3g) PyG 0.420 0.562 0.344 0.511 0.329 0.479
ULTRA (4g) PyG 0.444 0.588 0.344 0.513 WIP WIP
ULTRA (50g) PyG (pre-trained on 50 KGs) 0.444 0.580 0.395 0.554 0.389 0.549
Fine-tuning ULTRA on specific graphs brings, on average, further 10% relative performance boost both in MRR and Hits@10. See the paper for more comparisons. **ULTRA 50g Performance** ULTRA 50g was pre-trained on 50 graphs, so we can't really apply the zero-shot evaluation protocol to the graphs. However, we can compare with Supervised SOTA models trained from scratch on each dataset: | Model | Avg MRR, Transductive graphs (16)| Avg Hits@10, Transductive graphs (16)| | ----- | ---------------------------------| -------------------------------------| | Supervised SOTA models | 0.371 | 0.511 | | ULTRA 50g (single model) | **0.389** | **0.549** | That is, instead of training a big KG embedding model on your graph, you might want to consider running ULTRA (any of the checkpoints) as its performance might already be higher 🚀 ## Useful links Please report the issues in the [official GitHub repo of ULTRA](https://github.com/DeepGraphLearning/ULTRA)