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.

Reasoning Over Space: Enabling Geographic Reasoning for LLM-Based Generative Next POI Recommendation

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Jan 08, 2026
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Meta-Learning Guided Pruning for Few-Shot Plant Pathology on Edge Devices

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Jan 05, 2026
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End-to-end differentiable design of geometric waveguide displays

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Jan 07, 2026
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Variable Elimination in Hybrid Factor Graphs for Discrete-Continuous Inference & Estimation

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Jan 02, 2026
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HyperJoin: LLM-augmented Hypergraph Link Prediction for Joinable Table Discovery

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Jan 03, 2026
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One-Shot Structured Pruning of Quantum Neural Networks via $q$-Group Engineering and Quantum Geometric Metrics

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Dec 30, 2025
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Pruning as a Game: Equilibrium-Driven Sparsification of Neural Networks

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Dec 26, 2025
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Federated Learning With L0 Constraint Via Probabilistic Gates For Sparsity

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Dec 28, 2025
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Lightweight Intrusion Detection in IoT via SHAP-Guided Feature Pruning and Knowledge-Distilled Kronecker Networks

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Dec 22, 2025
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Effective Fine-Tuning with Eigenvector Centrality Based Pruning

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Dec 14, 2025
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