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Meta-Sparsity: Learning Optimal Sparse Structures in Multi-task Networks through Meta-learning

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arxiv 2501.12115 v1 pith:WAHLWGFB submitted 2025-01-21 cs.LG cs.CV

Meta-Sparsity: Learning Optimal Sparse Structures in Multi-task Networks through Meta-learning

classification cs.LG cs.CV
keywords learningsparsitysparsenetworkstasksapproachmeta-sparsitymodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper presents meta-sparsity, a framework for learning model sparsity, basically learning the parameter that controls the degree of sparsity, that allows deep neural networks (DNNs) to inherently generate optimal sparse shared structures in multi-task learning (MTL) setting. This proposed approach enables the dynamic learning of sparsity patterns across a variety of tasks, unlike traditional sparsity methods that rely heavily on manual hyperparameter tuning. Inspired by Model Agnostic Meta-Learning (MAML), the emphasis is on learning shared and optimally sparse parameters in multi-task scenarios by implementing a penalty-based, channel-wise structured sparsity during the meta-training phase. This method improves the model's efficacy by removing unnecessary parameters and enhances its ability to handle both seen and previously unseen tasks. The effectiveness of meta-sparsity is rigorously evaluated by extensive experiments on two datasets, NYU-v2 and CelebAMask-HQ, covering a broad spectrum of tasks ranging from pixel-level to image-level predictions. The results show that the proposed approach performs well across many tasks, indicating its potential as a versatile tool for creating efficient and adaptable sparse neural networks. This work, therefore, presents an approach towards learning sparsity, contributing to the efforts in the field of sparse neural networks and suggesting new directions for research towards parsimonious models.

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