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.

SFMambaNet: Spectral-Frequency Enhanced Selective State Space Model for Correspondence Pruning

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Jun 03, 2026
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STARFISH: faST Accuracy Recovery in pruned networks From Internal State Healing

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May 31, 2026
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PSViT: A Methodology for Structurally Pruning Spiking Vision Transformers

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Jun 02, 2026
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Zero-Copy Semantic Contagion: An In-Memory Streaming Architecture for Evolving Attention Graphs

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Jun 04, 2026
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PrimeSVT: An Automated Memory-aware Pruning Framework with Prioritized Compression Policy for Spiking Vision Transformers

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Jun 02, 2026
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MLSkip: Data Skipping for ML Filters via Lightweight Metadata

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Jun 02, 2026
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Neural Network Compression by Approximate Differential Equivalence

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May 31, 2026
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Low-Frequency Shortcuts in Texture-Driven Visual Learning

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Jun 02, 2026
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DOT-MoE: Differentiable Optimal Transport for MoEfication

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Jun 01, 2026
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Locality-Aware Redundancy Pruning for LLM Depth Compression

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May 27, 2026
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