Advancing Weight and Channel Sparsification with Enhanced Saliency
Xinglong Sun, Maying Shen, Hongxu Yin, Lei Mao, Pavlo Molchanov, Jose, M. Alvarez

TL;DR
This paper presents a novel sparsification method that enhances importance criteria for model pruning, improving accuracy and reducing training costs across various datasets and configurations.
Contribution
It introduces a new paradigm that separates exploitation and exploration in sparsification, enabling more effective and efficient pruning with enhanced importance criteria.
Findings
Achieves +1.3% Top-1 accuracy on ImageNet with ResNet50 at 90% sparsity.
Reduces training cost of HALP by over 70%.
Attains state-of-the-art performance with simple importance criteria.
Abstract
Pruning aims to accelerate and compress models by removing redundant parameters, identified by specifically designed importance scores which are usually imperfect. This removal is irreversible, often leading to subpar performance in pruned models. Dynamic sparse training, while attempting to adjust sparse structures during training for continual reassessment and refinement, has several limitations including criterion inconsistency between pruning and growth, unsuitability for structured sparsity, and short-sighted growth strategies. Our paper introduces an efficient, innovative paradigm to enhance a given importance criterion for either unstructured or structured sparsity. Our method separates the model into an active structure for exploitation and an exploration space for potential updates. During exploitation, we optimize the active structure, whereas in exploration, we reevaluate and…
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Taxonomy
TopicsAdvanced Materials and Mechanics · Tactile and Sensory Interactions · Advanced Sensor and Energy Harvesting Materials
