Representational Collapse in Multi-Agent LLM Committees: Measurement and Diversity-Aware Consensus

📰 ArXiv cs.AI

arXiv:2604.03809v1 Announce Type: cross Abstract: Multi-agent LLM committees replicate the same model under different role prompts and aggregate outputs by majority vote, implicitly assuming that agents contribute complementary evidence. We embed each agent's chain-of-thought rationale and measure pairwise similarity: across 100 GSM8K questions with three Qwen2.5-14B agents, mean cosine similarity is 0.888 and effective rank is 2.17 out of 3.0, a failure mode we term representational collapse. D

Published 7 Apr 2026
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