Hidden Progress in Deep Learning: SGD Learns Parities Near the Computational Limit
This addresses the computational scaling of deep learning for researchers, revealing hidden progress mechanisms beyond statistical capacity, though it is incremental in exploring specific hard problems.
The paper tackles the problem of understanding how deep learning scales computationally by studying neural networks learning k-sparse parities, a statistically easy but computationally hard task, and finds they succeed with discontinuous phase transitions near n^O(k) iterations, matching lower bounds.
There is mounting evidence of emergent phenomena in the capabilities of deep learning methods as we scale up datasets, model sizes, and training times. While there are some accounts of how these resources modulate statistical capacity, far less is known about their effect on the computational problem of model training. This work conducts such an exploration through the lens of learning a $k$-sparse parity of $n$ bits, a canonical discrete search problem which is statistically easy but computationally hard. Empirically, we find that a variety of neural networks successfully learn sparse parities, with discontinuous phase transitions in the training curves. On small instances, learning abruptly occurs at approximately $n^{O(k)}$ iterations; this nearly matches SQ lower bounds, despite the apparent lack of a sparse prior. Our theoretical analysis shows that these observations are not explained by a Langevin-like mechanism, whereby SGD "stumbles in the dark" until it finds the hidden set of features (a natural algorithm which also runs in $n^{O(k)}$ time). Instead, we show that SGD gradually amplifies the sparse solution via a Fourier gap in the population gradient, making continual progress that is invisible to loss and error metrics.