模型:
OpenAssistant/reward-model-deberta-v3-base
Reward model (RM) trained to predict which generated answer is better judged by a human, given a question.
RM are useful in these domain:
QA model evaluation
serves as reward score in RLHF
All models are train on these dataset with a same split seed across datasets (if validation split wasn't available)
from transformers import AutoModelForSequenceClassification, AutoTokenizer reward_name = "OpenAssistant/reward-model-deberta-v3-base" rank_model, tokenizer = AutoModelForSequenceClassification.from_pretrained(reward_name), AutoTokenizer.from_pretrained(reward_name) question, answer = "Explain nuclear fusion like I am five", "Nuclear fusion is the process by which two or more protons and neutrons combine to form a single nucleus. It is a very important process in the universe, as it is the source of energy for stars and galaxies. Nuclear fusion is also a key process in the production of energy for nuclear power plants." inputs = tokenizer(question, answer, return_tensors='pt') score = rank_model(**inputs).logits[0].cpu().detach() print(score)
Validation split accuracy
Model | WebGPT | Summary | SytheticGPT |
---|---|---|---|
electra-large-discriminator | 59.30 | 68.66 | 99.85 |
deberta-v3-large | 61.13 | 72.23 | 99.94 |
deberta-v3-base | 59.07 | 66.84 | 99.85 |
Its likely SytheticGPT has somekind of surface pattern on the choosen-rejected pair which makes it trivial to differentiate between better the answer.