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Uncovering a Winning Lottery Ticket with Continuously Relaxed Bernoulli Gates

arXiv cs.AI / 3/11/2026

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Key Points

  • The paper addresses the challenge of deploying over-parameterized neural networks on resource-constrained devices by discovering sparse subnetworks known as Strong Lottery Tickets (SLTs) without weight training.
  • The authors introduce a novel method using continuously relaxed Bernoulli gates for fully differentiable, end-to-end optimization that trains only gating parameters while keeping network weights frozen.
  • This approach avoids non-differentiable gradient estimators and iterative pruning cycles used in previous methods like edge-popup, allowing direct gradient-based optimization of an ℓ0-regularization objective.
  • Experiments demonstrate achieving up to 90% network sparsity with minimal accuracy loss across architectures including fully connected networks, ResNets, Wide-ResNets, Vision Transformers, and Swin-Teil models, nearly doubling sparsity compared to prior work.
  • The proposed framework establishes a scalable and efficient method for pre-training neural network sparsification, which is crucial for efficient deployment in resource-limited environments.

Computer Science > Machine Learning

arXiv:2603.08914 (cs)
[Submitted on 9 Mar 2026]

Title:Uncovering a Winning Lottery Ticket with Continuously Relaxed Bernoulli Gates

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Abstract:Over-parameterized neural networks incur prohibitive memory and computational costs for resource-constrained deployment. The Strong Lottery Ticket (SLT) hypothesis suggests that randomly initialized networks contain sparse subnetworks achieving competitive accuracy without weight training. Existing SLT methods, notably edge-popup, rely on non-differentiable score-based selection, limiting optimization efficiency and scalability. We propose using continuously relaxed Bernoulli gates to discover SLTs through fully differentiable, end-to-end optimization - training only gating parameters while keeping all network weights frozen at their initialized values. Continuous relaxation enables direct gradient-based optimization of an $\ell_0$-regularization objective, eliminating the need for non-differentiable gradient estimators or iterative pruning cycles. To our knowledge, this is the first fully differentiable approach for SLT discovery that avoids straight-through estimator approximations. Experiments across fully connected networks, CNNs (ResNet, Wide-ResNet), and Vision Transformers (ViT, Swin-T) demonstrate up to 90% sparsity with minimal accuracy loss - nearly double the sparsity achieved by edge-popup at comparable accuracy - establishing a scalable framework for pre-training network sparsification.
Subjects: Machine Learning (cs.LG); Artificial Intelligence (cs.AI)
Cite as: arXiv:2603.08914 [cs.LG]
  (or arXiv:2603.08914v1 [cs.LG] for this version)
  https://doi.org/10.48550/arXiv.2603.08914
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arXiv-issued DOI via DataCite

Submission history

From: Itamar Tsayag Mr [view email]
[v1] Mon, 9 Mar 2026 20:33:16 UTC (570 KB)
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