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The Butterfly Effect: Neural Network Training Trajectories Are Highly Sensitive to Initial Conditions

The Butterfly Effect: Neural Network Training Trajectories Are Highly Sensitive to Initial Conditions

来源:Arxiv_logoArxiv
英文摘要

Neural network training is inherently sensitive to initialization and the randomness induced by stochastic gradient descent. However, it is unclear to what extent such effects lead to meaningfully different networks, either in terms of the models' weights or the underlying functions that were learned. In this work, we show that during the initial "chaotic" phase of training, even extremely small perturbations reliably causes otherwise identical training trajectories to diverge-an effect that diminishes rapidly over training time. We quantify this divergence through (i) $L^2$ distance between parameters, (ii) the loss barrier when interpolating between networks, (iii) $L^2$ and barrier between parameters after permutation alignment, and (iv) representational similarity between intermediate activations; revealing how perturbations across different hyperparameter or fine-tuning settings drive training trajectories toward distinct loss minima. Our findings provide insights into neural network training stability, with practical implications for fine-tuning, model merging, and diversity of model ensembles.

Devin Kwok、Gül Sena Alt?nta?、Colin Raffel、David Rolnick

计算技术、计算机技术

Devin Kwok,Gül Sena Alt?nta?,Colin Raffel,David Rolnick.The Butterfly Effect: Neural Network Training Trajectories Are Highly Sensitive to Initial Conditions[EB/OL].(2025-06-16)[2025-07-18].https://arxiv.org/abs/2506.13234.点此复制

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