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.

Takeuchi's Information Criteria as Generalization Measures for DNNs Close to NTK Regime

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Feb 26, 2026
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Elimination-compensation pruning for fully-connected neural networks

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Feb 24, 2026
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Sparsity Induction for Accurate Post-Training Pruning of Large Language Models

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Feb 25, 2026
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Unlearning Noise in PINNs: A Selective Pruning Framework for PDE Inverse Problems

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Feb 23, 2026
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Pip-Stereo: Progressive Iterations Pruner for Iterative Optimization based Stereo Matching

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Feb 24, 2026
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MINAR: Mechanistic Interpretability for Neural Algorithmic Reasoning

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Feb 24, 2026
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Training Deep Stereo Matching Networks on Tree Branch Imagery: A Benchmark Study for Real-Time UAV Forestry Applications

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Feb 23, 2026
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Dirichlet Scale Mixture Priors for Bayesian Neural Networks

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Feb 23, 2026
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FinSight-Net:A Physics-Aware Decoupled Network with Frequency-Domain Compensation for Underwater Fish Detection in Smart Aquaculture

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Feb 23, 2026
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Bonsai: A Framework for Convolutional Neural Network Acceleration Using Criterion-Based Pruning

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Feb 19, 2026
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