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Rho-1: Not All Tokens Are What You Need

[πŸ“œ Arxiv] β€’ [πŸ’¬ HF Paper] β€’ [πŸ€— Models] β€’ [🐱 GitHub]


Figure 1: Rho-1 is pre-trained with Selective Language Modeling (SLM). SLM improves average few-shot accuracy on GSM8k and MATH by over 16%, achieving the baseline performance 5-10x faster.

πŸ”₯ News

  • [2024/04/12] πŸ”₯πŸ”₯πŸ”₯ Rho-Math-v0.1 models released at πŸ€— HuggingFace!
    • Rho-Math-1B and Rho-Math-7B achieve 15.6% and 31.0% few-shot accuracy on MATH dataset, respectively β€” matching DeepSeekMath with only 3% of the pretraining tokens.
    • Rho-Math-1B-Interpreter is the first 1B LLM that achieves over 40% accuracy on MATH.
    • Rho-Math-7B-Interpreter achieves 52% on MATH dataset, using only 69k samples for fine-tuning.
  • [2024/04/11] Rho-1 paper and repo released.

πŸ’‘ Introduction

Rho-1 base models employ Selective Language Modeling (SLM) for pretraining, which selectively trains on clean and useful tokens that aligned with the desired distribution.

Selective Lanugage Modeling (SLM)


Figure 2: Upper: Even an extensively filtered pretraining corpus contains token-level noise. Left: Previous Causal Language Modeling (CLM) trains on all tokens. Right: Our proposed Selective Language Modeling (SLM) selectively applies loss on those useful and clean tokens.


Figure 3: The pipeline of Selective Language Modeling. SLM optimizes language model performance by concentrating on valuable, clean tokens during pre-training. It involves three steps: (Step 1) Initially, train a reference model on high-quality data. (Step 2) Then, score each token's loss in a corpus using the reference model. (Step 3) Finally, train the language model selectively on tokens that show higher excess loss compared to the reference loss.

Evaluation Results

Base models (Few-shot CoT):

Model Size Data Uniq. Token Train Token GSM8K MATH MMLU STEM SAT
1-2B Base Models
Qwen1.5 1.8B - - - 36.1 6.8 31.3 40.6
Gemma 2.0B - - - 18.8 11.4 34.4 50.0
DeepSeekMath 1.3B - 120B 150B 23.8 13.6 33.1 56.3
Rho-Math-1B-v0.1 1.1B OWM 14B 30B 36.2 15.6 23.3 28.1
>= 7B Base Models
Mistral 7B - - 41.2 11.6 49.5 59.4
Minerva 540B - 39B 26B 58.8 33.6 63.9 -
LLemma 34B PPile 55B 50B 54.2 23.0 54.7 68.8
InternLM2-Math 20B - 31B 125B 65.4 30.0 53.1 71.9
DeepSeekMath 7B - 120B 500B 64.1 34.2 56.4 84.4
Rho-Math-7B-v0.1 7B OWM 14B 10.5B 66.9 31.0 54.6 84.4

Tool-integrated reasoning (Code Interpreter):

Model Size SFT Data GSM8k MATH SVAMP ASDiv MAWPS TabMWP GSM-Hard AVG
gpt4-early (pal) - - 94.2 51.8 94.8 92.6 97.7 95.9 77.6 86.4
gpt-4-turbo-2024-04-09 (cot) - - - 73.4 - - - - -
Open-Source Small Models
MAmmoTH 70B MI-260k 76.9 41.8 82.4 - - - - -
ToRA 7B ToRA-69k 68.8 40.1 68.2 73.9 88.8 42.4 54.6 62.4
ToRA 70B ToRA-69k 84.3 49.7 82.7 86.8 93.8 74.0 67.2 76.9
DeepSeekMath 7B ToRA-69k 79.8 52.0 80.1 87.1 93.8 85.8 63.1 77.4
Rho-Math-1B-Interpreter-v0.1 1B ToRA-69k 59.4 40.6 60.7 74.2 88.6 26.7 48.1 56.9
Rho-Math-7B-Interpreter-v0.1 7B ToRA-69k 81.3 51.8 80.8 85.5 94.5 70.1 63.1 75.3

πŸš€ Quick Start

Evaluation

git clone [email protected]:microsoft/rho.git
cd rho-1/math-evaluation-harness

Base model few-shot evaluation:

bash scripts/run_eval.sh cot microsoft/rho-math-7b-v0.1

SFT model (code-interpreter) evaluation:

bash scripts/run_eval.sh tora microsoft/rho-math-7b-interpreter-v0.1

Our reproduced outputs are provided in rho-1/outputs.zip.

β˜•οΈ Citation

If you find this repository helpful, please consider citing our paper:

@misc{lin2024rho1,
      title={Rho-1: Not All Tokens Are What You Need}, 
      author={Zhenghao Lin and Zhibin Gou and Yeyun Gong and Xiao Liu and Yelong Shen and Ruochen Xu and Chen Lin and Yujiu Yang and Jian Jiao and Nan Duan and Weizhu Chen},
      year={2024},
      eprint={2404.07965},
      archivePrefix={arXiv},
      primaryClass={cs.CL}
}
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