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.

A Benchmark Study of Neural Network Compression Methods for Hyperspectral Image Classification

Add code
Mar 05, 2026
Viaarxiv icon

Adaptive Prototype-based Interpretable Grading of Prostate Cancer

Add code
Mar 05, 2026
Viaarxiv icon

Constraint-Aware Generative Re-ranking for Multi-Objective Optimization in Advertising Feeds

Add code
Mar 04, 2026
Viaarxiv icon

SORT: A Systematically Optimized Ranking Transformer for Industrial-scale Recommenders

Add code
Mar 04, 2026
Viaarxiv icon

An LLM-Guided Query-Aware Inference System for GNN Models on Large Knowledge Graphs

Add code
Mar 04, 2026
Viaarxiv icon

The Malignant Tail: Spectral Segregation of Label Noise in Over-Parameterized Networks

Add code
Mar 02, 2026
Viaarxiv icon

Exact and Asymptotically Complete Robust Verifications of Neural Networks via Quantum Optimization

Add code
Feb 28, 2026
Viaarxiv icon

TP-Spikformer: Token Pruned Spiking Transformer

Add code
Feb 28, 2026
Viaarxiv icon

GRAIL: Post-hoc Compensation by Linear Reconstruction for Compressed Networks

Add code
Mar 02, 2026
Viaarxiv icon

Improved Adversarial Diffusion Compression for Real-World Video Super-Resolution

Add code
Feb 28, 2026
Viaarxiv icon