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Why can genetic algorithms work in high-dimensional search spaces?

2026-06-29 · arXiv: 2606.30619

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An AI research paper on Why can genetic algorithms work in high-dimensional search spaces?.

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Chinese explanation / 中文解读

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Original abstract

We show that the effective dynamics of the elitist $(1+M)$ genetic algorithm is, in the limit of small mutations, clipped gradient descent on the loss in the presence of anisotropic Gaussian white noise. In expectation, therefore, a simple mutation-selection genetic algorithm follows the gradient of the loss, without explicit calculation of gradients and without averaging over loss evaluations. The genetic algorithm is slower than gradient descent because of the noise that acts in directions transverse to the gradient. However, this slowdown is controlled not by the number of parameters of the search space but by the effective rank of the Hessian of the loss function. For the concentrated Hessian spectra observed in neural-network loss functions the effective rank can be far smaller than the number of parameters, which may explain why genetic algorithms can scale to large search spaces.

5.0Engineering value
7.0Research novelty
4.0Business relevance

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