Introducing Semantics into Speech Encoders
Abstract
Recent studies find existing self-supervised speech encoders contain primarily acoustic rather than semantic information. As a result, pipelined supervised automatic speech recognition (ASR) to large language model (LLM) systems achieve state-of-the-art results on semantic spoken language tasks by utilizing rich semantic representations from the LLM. These systems come at the cost of labeled audio transcriptions, which is expensive and time-consuming to obtain. We propose a task-agnostic unsupervised way of incorporating semantic information from LLMs into self-supervised speech encoders without labeled audio transcriptions. By introducing semantics, we improve existing speech encoder spoken language understanding performance by over 10\% on intent classification, with modest gains in named entity resolution and slot filling, and spoken question answering FF1 score by over 2\%. Our unsupervised approach achieves similar performance as supervised methods trained on over 100 hours of labeled audio transcripts, demonstrating the feasibility of unsupervised semantic augmentations to existing speech encoders.
Cite
@article{arxiv.2211.08402,
title = {Introducing Semantics into Speech Encoders},
author = {Derek Xu and Shuyan Dong and Changhan Wang and Suyoun Kim and Zhaojiang Lin and Akshat Shrivastava and Shang-Wen Li and Liang-Hsuan Tseng and Alexei Baevski and Guan-Ting Lin and Hung-yi Lee and Yizhou Sun and Wei Wang},
journal= {arXiv preprint arXiv:2211.08402},
year = {2022}
}
Comments
11 pages, 3 figures