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.

Partial Fusion of Neural Networks: Efficient Tradeoffs Between Ensembles and Weight Aggregation

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May 21, 2026
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How Sparsity Allocation Shapes Label-Free Post-Pruning Recoverability

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May 21, 2026
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Scout-Assisted Planning for Heterogeneous Robot Teams under Partially Known Environments

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May 21, 2026
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Adaptive Signal Resuscitation: Channel-wise Post-Pruning Repair for Sparse Vision Networks

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May 20, 2026
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QuantSR+: Pushing the Limit of Quantized Image Super-Resolution Networks

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May 21, 2026
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Memory-Efficient Partitioned DNN Inference on Resource-Constrained Android Crowds

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May 20, 2026
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Ex-GraphRAG: Interpretable Evidence Routing for Graph-Augmented LLMs

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May 21, 2026
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Dual-Integrated Low-Latency Single-Lens Infrared Computational Imaging for Object Detection

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May 21, 2026
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GSA-YOLO: A High-Efficiency Framework via Structured Sparsity and Adaptive Knowledge Distillation for Real-Time X-ray Security Inspection

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May 20, 2026
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E-ReCON: An Energy- and Resource-Efficient Precision-Configurable Sparse nvCIM Macro for Conventional and Spiking Neural Edge Inference

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May 20, 2026
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