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Introduction

MetaAligner-IMHI-13B is part of the MetaAligner project, the first policy-agnostic and generalizable method for multi-objective preference alignment of large language models. This model is finetuned based on the Meta LLaMA2-13B foundation model and the dynamic multi-objective dataset built from the IMHI dataset. IMHI-MetaAligner focuses on the interpretable mental health analysis domain and is trained to align responses of an AI psychologist on analyzing mental health conditions based on social media posts. The model is expected to perform multi-objective alignment efficiently, without tuning the policy models or accessing their parameters. MetaAligner also exerts zero-shot preference alignment for unseen objectives. To our knowledge, this work marks the first attempt at generalizable multi- objective preference alignment. Experimental results show that MetaAligner can simultaneously perform effective alignment for multiple unseen objectives while maintaining performance on aligned objectives.

Dataset

This model is trained based on the following released dataset:

Usage

With the Hugging Face Transformers library, you can use the MetaAligner-IMHI-13B model in your Python project. Here is a simple example of how to load the model:

import torch
from transformers import LlamaTokenizer, LlamaForCausalLM
tokenizer = LlamaTokenizer.from_pretrained('MetaAligner/MetaAligner-IMHI-13B', padding_side='left')
model = LlamaForCausalLM.from_pretrained('MetaAligner/MetaAligner-IMHI-13B', device_map='auto', torch_dtype=torch.bfloat16)
device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")

In this example, LlamaTokenizer is used to load the tokenizer, and LlamaForCausalLM is used to load the model. The device_map='auto' argument is used to automatically use the GPU if it's available.

You can align any outputs obtained from other foundation models with your self-defined objectives. For example, we have the following query from HH-RLHF, unaligned output examples from Gemma-7B, and target objectives:

all_aspects = {'correct': 'Correctness: the explanations should make correct predictions',
               'informative': 'Informative: the response should express clear logic and provide consistent evidence',
               'professional': 'Professional: the response should provide evidence with high quality and reliability'}
aspects = ['correct', 'informative', 'professional']
question = "Consider this post: 'how the coronavirus could damage the US economy' Question: What is the stress cause of this post?"
answer = "The stress cause of this post is the potential damage of the coronavirus to the US economy."

To ensure the best performance, use the following template to prompt MetaAligner:

query_prompt = 'Edit the following Question-Answer pair to make it better considering these aspects "{aspects}" | ' \
                   'Question: {question} | Answer: {answer} | Edit: '
aspects = [all_aspects[i] for i in aspects]
aligner_queries = [query_prompt.format(aspects='; '.join(aspects), question=question, answer=str(answer))]

You can obtain an aligned response using the following codes:

inputs = tokenizer(aligner_queries, return_tensors="pt", padding=True)
input_ids = inputs.input_ids.to(device)
generate_ids = model.generate(input_ids, max_new_tokens=1024)
truc_ids = generate_ids[0][len(input_ids[0]):]
response = tokenizer.decode(truc_ids, skip_special_tokens=True, spaces_between_special_tokens=False)
print(response)

One inference of MetaAligner-IMHI-13B on the above codes has the following response:

Answer: This post is discussing a potential economic impact of the coronavirus, which falls under the category of financial problem. The stress cause of this post is the potential damage to the US economy caused by the coronavirus.

License

MetaAligner-IMHI-13B is licensed under MIT. For more details, please see the MIT file.

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