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Modular Meta-Learning with Shrinkage

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arxiv 1909.05557 v4 pith:NPZ4LCLL submitted 2019-09-12 cs.LG cs.AIstat.ML

Modular Meta-Learning with Shrinkage

classification cs.LG cs.AIstat.ML
keywords meta-learningtask-specificexistingmodulesadaptationgeneralincludinglong
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Many real-world problems, including multi-speaker text-to-speech synthesis, can greatly benefit from the ability to meta-learn large models with only a few task-specific components. Updating only these task-specific modules then allows the model to be adapted to low-data tasks for as many steps as necessary without risking overfitting. Unfortunately, existing meta-learning methods either do not scale to long adaptation or else rely on handcrafted task-specific architectures. Here, we propose a meta-learning approach that obviates the need for this often sub-optimal hand-selection. In particular, we develop general techniques based on Bayesian shrinkage to automatically discover and learn both task-specific and general reusable modules. Empirically, we demonstrate that our method discovers a small set of meaningful task-specific modules and outperforms existing meta-learning approaches in domains like few-shot text-to-speech that have little task data and long adaptation horizons. We also show that existing meta-learning methods including MAML, iMAML, and Reptile emerge as special cases of our method.

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