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MCTS performs not good enough (a comparison with CoT, and best-of-N) #95

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@rtarikt

Hi,

Thanks for the work. I have a question about the performance of MCTS compared to Best-of-N on MATH500 dataset using Qwen2.5-Math-7B-Instruct model. In my experiments, MCTS could not get higher majority_vote results than best-of-N. I am sharing my configs and the comparative results below. Considering MCTS's more complex structure, I believe that it should achieve higher results than the Best-of-N, which has a very direct way of reasoning. Do you have any suggestions on improving MCTS results?

Thanks.

Table 1. Comparative results of different reasoning techniques.

method majority_vote
CoT 0.836
best-of-N 0.876
MCTS 0.872

Table 2. The parameter setting used in the experiments.

parameter value
temperature 0.7
num_sequence 8
max_new_tokens 2048
num_worker 32

System Info

Operating System = Linux
Python version = 3.10
Hardware = A40

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