Learning from higher-order statistics, efficiently: hypothesis tests, random features, and neural networks
December 22, 2023 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Eszter Szรฉkely, Lorenzo Bardone, Federica Gerace, Sebastian Goldt
arXiv ID
2312.14922
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cond-mat.stat-mech,
cs.LG
Citations
3
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
Neural networks excel at discovering statistical patterns in high-dimensional data sets. In practice, higher-order cumulants, which quantify the non-Gaussian correlations between three or more variables, are particularly important for the performance of neural networks. But how efficient are neural networks at extracting features from higher-order cumulants? We study this question in the spiked cumulant model, where the statistician needs to recover a privileged direction or "spike" from the order-$p\ge 4$ cumulants of $d$-dimensional inputs. Existing literature established the presence of a wide statistical-to-computational gap in this problem. We deepen this line of work by finding an exact formula for the likelihood ratio norm which proves that statistical distinguishability requires $n\gtrsim d$ samples, while distinguishing the two distributions in polynomial time requires $n \gtrsim d^2$ samples for a wide class of algorithms, i.e. those covered by the low-degree conjecture. Numerical experiments show that neural networks do indeed learn to distinguish the two distributions with quadratic sample complexity, while "lazy" methods like random features are not better than random guessing in this regime. Our results show that neural networks extract information from higher-ordercorrelations in the spiked cumulant model efficiently, and reveal a large gap in the amount of data required by neural networks and random features to learn from higher-order cumulants.
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