โ€œPruning Neural Networks at Initialization: Why Are We Missing the Mark?โ€, Jonathan Frankle, Gintare Karolina Dziugaite, Daniel M. Roy, Michael Carbin2020-09-18 (; backlinks; similar)โ :

Recent work has explored the possibility of pruning neural networks at initialization.

We assess proposals for doing so: SNIP (Lee et al 2019), GraSP (Wang et al 2020), SynFlow (Tanaka et al 2020), and magnitude pruning. Although these methods surpass the trivial baseline of random pruning, they remain below the accuracy of magnitude pruning after training, and we endeavor to understand why.

We show that, unlike pruning after training, randomly shuffling the weights these methods prune within each layer or sampling new initial values preserves or improves accuracy. As such, the per-weight pruning decisions made by these methods can be replaced by a per-layer choice of the fraction of weights to prune.

This property suggests broader challenges with the underlying pruning heuristics, the desire to prune at initialization, or both.