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Accepted to MathNLP @ EMNLP 2025

SMAGDi: Socratic Multi Agent Interaction Graph Distillation for Efficient High Accuracy Reasoning

Aayush Aluru, Myra N. Malik, Samarth Patankar, Spencer Kim

Abstract

Multi-agent systems (MAS) often achieve higher reasoning accuracy than single models, but their reliance on repeated debates across agents makes them computationally expensive. We introduce SMAGDi, a distillation framework that transfers the debate dynamics of a five-agent Llama-based MAS into a compact Socratic decomposer-solver student. SMAGDi represents debate traces as directed interaction graphs, where nodes encode intermediate reasoning steps with correctness labels and edges capture continuity and cross-agent influence. The student is trained with a composite objective combining language modeling, graph-based supervision, contrastive reasoning, and embedding alignment to preserve both fluency and structured reasoning. On StrategyQA and MMLU, SMAGDi compresses a 40B multi-agent system into a 6B student while retaining 88% of its accuracy, substantially outperforming prior distillation methods such as MAGDi, standard KD, and fine-tuned baselines.

Citation

Aayush Aluru, Myra N. Malik, Samarth Patankar, Spencer Kim. "SMAGDi: Socratic Multi Agent Interaction Graph Distillation for Efficient High Accuracy Reasoning". Accepted to MathNLP @ EMNLP 2025.

Details

Conference
Accepted to MathNLP @ EMNLP 2025
Authors
4 authors

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