Deep Learning of Compositional Targets with Hierarchical Spectral Methods
Tabanelli, Hugo, Dandi, Yatin, Pesce, Luca, Krzakala, Florent
Why depth yields a genuine computational advantage over shallow methods remains a central open question in learning theory. We study this question in a controlled high-dimensional Gaussian setting, focusing on compositional target functions. We analyze their learnability using an explicit three-layer fitting model trained via layer-wise spectral estimators. Although the target is globally a high-degree polynomial, its compositional structure allows learning to proceed in stages: an intermediate representation reveals structure that is inaccessible at the input level. This reduces learning to simpler spectral estimation problems, well studied in the context of multi-index models, whereas any shallow estimator must resolve all components simultaneously. Our analysis relies on Gaussian universality, leading to sharp separations in sample complexity between two and three-layer learning strategies.
Feb-12-2026
- Country:
- Africa > Middle East
- Tunisia > Ben Arous Governorate > Ben Arous (0.04)
- Europe > Switzerland
- North America > United States (0.28)
- Africa > Middle East
- Genre:
- Research Report > New Finding (0.46)
- Technology: