Datasets:
metadata
license: mit
Difficulty Estimation on DeepScaleR
We annotate the entire DeepScaleR dataset with a difficulty score based on the performance of the Qwen 2.5-MATH-7B model. This provides an adaptive signal for curriculum construction and model evaluation.
DeepScaleR is a curated dataset of 40,000 reasoning-intensive problems used to train and evaluate reinforcement learning-based methods for large language models.
Difficulty Scoring Method
Difficulty scores are estimated using the Qwen 2.5-MATH-7B model with the following generation settings:
temperature = 0.6
top_p = 0.9
max_tokens = 4096
- Inference performed using vLLM
- Each problem is attempted 128 times
The difficulty score d_i
for each problem is computed as:
d_i = 100 × (1 - (# successes / 128))
This approach balances the evaluation signal:
- A strong model would trivially solve easy problems, compressing the difficulty scale.
- A weak model would fail uniformly, providing poor resolution.
- Qwen 2.5-MATH-7B was selected for its mid-range capabilities, offering meaningful gradients across a wide spectrum of problems.
Difficulty Estimation on Other Datasets
We also apply the same difficulty estimation procedure to the following datasets:
📬 Contact
For questions or feedback, feel free to reach out to Taiwei Shi at [email protected].