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Autori principali: Lee, Harlin, Saeed, Aaqib, Bertozzi, Andrea L.
Natura: Preprint
Pubblicazione: 2022
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Accesso online:https://arxiv.org/abs/2211.00119
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author Lee, Harlin
Saeed, Aaqib
Bertozzi, Andrea L.
author_facet Lee, Harlin
Saeed, Aaqib
Bertozzi, Andrea L.
contents Pretraining neural networks with massive unlabeled datasets has become popular as it equips the deep models with a better prior to solve downstream tasks. However, this approach generally assumes that the downstream tasks have access to annotated data of sufficient size. In this work, we propose ALOE, a novel system for improving the data- and label-efficiency of non-semantic speech tasks with active learning. ALOE uses pretrained models in conjunction with active learning to label data incrementally and learn classifiers for downstream tasks, thereby mitigating the need to acquire labeled data beforehand. We demonstrate the effectiveness of ALOE on a wide range of tasks, uncertainty-based acquisition functions, and model architectures. Training a linear classifier on top of a frozen encoder with ALOE is shown to achieve performance similar to several baselines that utilize the entire labeled data.
format Preprint
id arxiv_https___arxiv_org_abs_2211_00119
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Active Learning of Non-semantic Speech Tasks with Pretrained Models
Lee, Harlin
Saeed, Aaqib
Bertozzi, Andrea L.
Sound
Audio and Speech Processing
Pretraining neural networks with massive unlabeled datasets has become popular as it equips the deep models with a better prior to solve downstream tasks. However, this approach generally assumes that the downstream tasks have access to annotated data of sufficient size. In this work, we propose ALOE, a novel system for improving the data- and label-efficiency of non-semantic speech tasks with active learning. ALOE uses pretrained models in conjunction with active learning to label data incrementally and learn classifiers for downstream tasks, thereby mitigating the need to acquire labeled data beforehand. We demonstrate the effectiveness of ALOE on a wide range of tasks, uncertainty-based acquisition functions, and model architectures. Training a linear classifier on top of a frozen encoder with ALOE is shown to achieve performance similar to several baselines that utilize the entire labeled data.
title Active Learning of Non-semantic Speech Tasks with Pretrained Models
topic Sound
Audio and Speech Processing
url https://arxiv.org/abs/2211.00119