The Majority is not always right: RL training for solution aggregation
By: Wenting Zhao , Pranjal Aggarwal , Swarnadeep Saha and more
Potential Business Impact:
Makes AI smarter by teaching it to pick the best answer.
Scaling up test-time compute, by generating multiple independent solutions and selecting or aggregating among them, has become a central paradigm for improving large language models (LLMs) on challenging reasoning tasks. While most prior work relies on simple majority voting or reward model ranking to aggregate solutions, these approaches may only yield limited benefits. In this work, we propose to learn aggregation as an explicit reasoning skill: given a set of candidate solutions, we train an aggregator model to review, reconcile, and synthesize a final, correct answer using reinforcement learning from verifiable rewards. A key ingredient is careful balancing of easy and hard training examples, allowing the model to learn both to recover minority-but-correct answers as well as easy majority-correct answers. Empirically, we find our method, AggLM, outperforms both strong rule-based and reward-model baselines, across multiple benchmarks. Furthermore, it generalizes effectively to solutions from differing models, including stronger ones than contained in the training data, all while requiring substantially fewer tokens than majority voting with larger numbers of solutions.
Similar Papers
Learning to Reason Across Parallel Samples for LLM Reasoning
Computation and Language
Makes AI smarter by checking many answers.
Learning Robust Social Strategies with Large Language Models
Machine Learning (CS)
Teaches AI to work together, not cheat.
AbstRaL: Augmenting LLMs' Reasoning by Reinforcing Abstract Thinking
Computation and Language
Teaches computers to think smarter, not just memorize.