We investigate whether structural change in a multi-LLM network produces performance gains independent of individual model capability. Two three-node networks, both using identical models (qwen2. 5: 3b via Ollama) on identical hardware, were compared on a world-consistency contradiction detection task. Experiment A used a fixed sequential topology. Experiment B used an adaptive topology in which connection weights (flowweights) — termed Adaptive Artificial Synapses (AAS) — were updated after each outcome. The adaptive network outperformed the fixed network in all five trials. Mean accuracy difference on questions 51–100: +17. 6% (t (4) = 9. 60, p = 0. 0007, Cohen's d = 4. 29, 95% CI: +0. 117, +0. 235). All three pre-defined significance criteria were met. This suggests that connection dynamics — independent of node-level capability — contribute meaningfully to system-level performance. Code and data available at: https: //github. com/piperendervt-glitch/sdnd-proofThis work is governed by the safety principles documented in constitution. md, available at: https: //github. com/piperendervt-glitch/sdnd-proof
Katsuma Murashita (Mon,) studied this question.
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