Network Pruning


Network pruning is a popular approach to reduce a heavy network to obtain a lightweight form by removing redundancy in the heavy network. In this approach, a complex over-parameterized network is first trained, then pruned based on some criteria, and finally fine-tuned to achieve comparable performance with reduced parameters.

Topology-Aware Revival for Efficient Sparse Training

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Feb 04, 2026
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It's not a Lottery, it's a Race: Understanding How Gradient Descent Adapts the Network's Capacity to the Task

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Feb 04, 2026
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E-Globe: Scalable $ε$-Global Verification of Neural Networks via Tight Upper Bounds and Pattern-Aware Branching

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Feb 04, 2026
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Toward a Sustainable Federated Learning Ecosystem: A Practical Least Core Mechanism for Payoff Allocation

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Feb 03, 2026
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TopoPrune: Robust Data Pruning via Unified Latent Space Topology

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Feb 02, 2026
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GMAC: Global Multi-View Constraint for Automatic Multi-Camera Extrinsic Calibration

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Feb 01, 2026
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Lyapunov Stability-Aware Stackelberg Game for Low-Altitude Economy: A Control-Oriented Pruning-Based DRL Approach

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Feb 01, 2026
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Optimizing Tensor Train Decomposition in DNNs for RISC-V Architectures Using Design Space Exploration and Compiler Optimizations

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Feb 02, 2026
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Reliability-Aware Determinantal Point Processes for Robust Informative Data Selection in Large Language Models

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Jan 31, 2026
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Denoising deterministic networks using iterative Fourier transforms

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Jan 31, 2026
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