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Hierarchical Recurrent Adapters for Efficient Multi-Task Adaptation of Large Speech Models

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arxiv 2403.19709 v1 pith:OTE366YU submitted 2024-03-25 eess.AS cs.AIcs.CLcs.LGcs.NE

Hierarchical Recurrent Adapters for Efficient Multi-Task Adaptation of Large Speech Models

classification eess.AS cs.AIcs.CLcs.LGcs.NE
keywords adapteradaptationlargetasksdownstreamhierarchicalmulti-taskparameter
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Parameter efficient adaptation methods have become a key mechanism to train large pre-trained models for downstream tasks. However, their per-task parameter overhead is considered still high when the number of downstream tasks to adapt for is large. We introduce an adapter module that has a better efficiency in large scale multi-task adaptation scenario. Our adapter is hierarchical in terms of how the adapter parameters are allocated. The adapter consists of a single shared controller network and multiple task-level adapter heads to reduce the per-task parameter overhead without performance regression on downstream tasks. The adapter is also recurrent so the entire adapter parameters are reused across different layers of the pre-trained model. Our Hierarchical Recurrent Adapter (HRA) outperforms the previous adapter-based approaches as well as full model fine-tuning baseline in both single and multi-task adaptation settings when evaluated on automatic speech recognition tasks.

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