Unlearnable phases of matter

arXiv:2602.11262v1
Originality Highly original
AI Analysis

This work identifies fundamental limitations in machine learning for physics, potentially impacting the use of ML in detecting phases and transitions in quantum systems.

The paper demonstrates that certain mixed-state phases of matter are computationally hard to learn using machine learning, specifically showing that autoregressive neural networks fail to capture global properties of distributions with locally indistinguishable states, as validated on toric/surface code distributions under noise.

We identify fundamental limitations in machine learning by demonstrating that non-trivial mixed-state phases of matter are computationally hard to learn. Focusing on unsupervised learning of distributions, we show that autoregressive neural networks fail to learn global properties of distributions characterized by locally indistinguishable (LI) states. We demonstrate that conditional mutual information (CMI) is a useful diagnostic for LI: we show that for classical distributions, long-range CMI of a state implies a spatially LI partner. By introducing a restricted statistical query model, we prove that nontrivial phases with long-range CMI, such as strong-to-weak spontaneous symmetry breaking phases, are hard to learn. We validate our claims by using recurrent, convolutional, and Transformer neural networks to learn the syndrome and physical distributions of toric/surface code under bit flip noise. Our findings suggest hardness of learning as a diagnostic tool for detecting mixed-state phases and transitions and error-correction thresholds, and they suggest CMI and more generally ``non-local Gibbsness'' as metrics for how hard a distribution is to learn.

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