Meta-Sparsity: Learning Optimal Sparse Structures in Multi-task Networks through Meta-learning
Richa Upadhyay, Ronald Phlypo, Rajkumar Saini, Marcus Liwicki

TL;DR
Meta-sparsity introduces a meta-learning framework that automatically learns optimal sparse structures in multi-task neural networks, improving efficiency and adaptability across diverse tasks without manual hyperparameter tuning.
Contribution
The paper proposes a novel meta-learning approach for dynamic, shared sparsity pattern learning in multi-task neural networks, advancing automatic sparsity optimization.
Findings
Effective across diverse tasks and datasets
Reduces unnecessary parameters while maintaining performance
Enhances adaptability to unseen tasks
Abstract
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…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Machine Learning and ELM · Machine Learning and Data Classification
