A Quantitative Approach to Understand Self-Supervised Models as
Cross-lingual Feature Extractors
- URL: http://arxiv.org/abs/2311.15954v1
- Date: Mon, 27 Nov 2023 15:58:28 GMT
- Title: A Quantitative Approach to Understand Self-Supervised Models as
Cross-lingual Feature Extractors
- Authors: Shuyue Stella Li, Beining Xu, Xiangyu Zhang, Hexin Liu, Wenhan Chao,
Leibny Paola Garcia
- Abstract summary: We analyze the effect of model size, training objectives, and model architecture on the models' performance as a feature extractor.
We develop a novel metric, the Phonetic-Syntax Ratio (PSR), to measure the phonetic and synthetic information in the extracted representations.
- Score: 9.279391026742658
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this work, we study the features extracted by English self-supervised
learning (SSL) models in cross-lingual contexts and propose a new metric to
predict the quality of feature representations. Using automatic speech
recognition (ASR) as a downstream task, we analyze the effect of model size,
training objectives, and model architecture on the models' performance as a
feature extractor for a set of topologically diverse corpora. We develop a
novel metric, the Phonetic-Syntax Ratio (PSR), to measure the phonetic and
synthetic information in the extracted representations using deep generalized
canonical correlation analysis. Results show the contrastive loss in the
wav2vec2.0 objective facilitates more effective cross-lingual feature
extraction. There is a positive correlation between PSR scores and ASR
performance, suggesting that phonetic information extracted by monolingual SSL
models can be used for downstream tasks in cross-lingual settings. The proposed
metric is an effective indicator of the quality of the representations and can
be useful for model selection.
Related papers
- Align-SLM: Textless Spoken Language Models with Reinforcement Learning from AI Feedback [50.84142264245052]
This work introduces the Align-SLM framework to enhance the semantic understanding of textless Spoken Language Models (SLMs)
Our approach generates multiple speech continuations from a given prompt and uses semantic metrics to create preference data for Direct Preference Optimization (DPO)
We evaluate the framework using ZeroSpeech 2021 benchmarks for lexical and syntactic modeling, the spoken version of the StoryCloze dataset for semantic coherence, and other speech generation metrics, including the GPT4-o score and human evaluation.
arXiv Detail & Related papers (2024-11-04T06:07:53Z) - Exploring the Impact of Data Quantity on ASR in Extremely Low-resource Languages [24.856817602140193]
This study focuses on two endangered Austronesian languages, Amis and Seediq.
We propose a novel data-selection scheme leveraging a multilingual corpus to augment the limited target language data.
arXiv Detail & Related papers (2024-09-13T14:35:47Z) - ML-SUPERB 2.0: Benchmarking Multilingual Speech Models Across Modeling Constraints, Languages, and Datasets [106.7760874400261]
This paper presents ML-SUPERB2.0, which is a new benchmark for evaluating pre-trained SSL and supervised speech models.
We find performance improvements over the setup of ML-SUPERB, but performance depends on the downstream model design.
Also, we find large performance differences between languages and datasets, suggesting the need for more targeted approaches.
arXiv Detail & Related papers (2024-06-12T21:01:26Z) - Self-supervised Neural Factor Analysis for Disentangling Utterance-level
Speech Representations [30.293081541301746]
Self-supervised learning (SSL) speech models such as wav2vec and HuBERT have demonstrated state-of-the-art performance on automatic speech recognition.
We argue that the problem is caused by the lack of disentangled representations and an utterance-level learning objective.
Our models outperform the current best model, WavLM, on all utterance-level non-semantic tasks on the SUPERB benchmark with only 20% of labeled data.
arXiv Detail & Related papers (2023-05-14T08:26:24Z) - An Empirical Investigation of Commonsense Self-Supervision with
Knowledge Graphs [67.23285413610243]
Self-supervision based on the information extracted from large knowledge graphs has been shown to improve the generalization of language models.
We study the effect of knowledge sampling strategies and sizes that can be used to generate synthetic data for adapting language models.
arXiv Detail & Related papers (2022-05-21T19:49:04Z) - Automatic Pronunciation Assessment using Self-Supervised Speech
Representation Learning [13.391307807956673]
We propose a novel automatic pronunciation assessment method based on self-supervised learning (SSL) models.
First, the proposed method fine-tunes the pre-trained SSL models with connectionist temporal classification to adapt the English pronunciation of English-as-a-second-language learners.
We show that the proposed SSL model-based methods outperform the baselines, in terms of the Pearson correlation coefficient, on datasets of Korean ESL learner children and Speechocean762.
arXiv Detail & Related papers (2022-04-08T06:13:55Z) - LDNet: Unified Listener Dependent Modeling in MOS Prediction for
Synthetic Speech [67.88748572167309]
We present LDNet, a unified framework for mean opinion score (MOS) prediction.
We propose two inference methods that provide more stable results and efficient computation.
arXiv Detail & Related papers (2021-10-18T08:52:31Z) - Incorporating Linguistic Knowledge for Abstractive Multi-document
Summarization [20.572283625521784]
We develop a neural network based abstractive multi-document summarization (MDS) model.
We process the dependency information into the linguistic-guided attention mechanism.
With the help of linguistic signals, sentence-level relations can be correctly captured.
arXiv Detail & Related papers (2021-09-23T08:13:35Z) - Layer-wise Analysis of a Self-supervised Speech Representation Model [26.727775920272205]
Self-supervised learning approaches have been successful for pre-training speech representation models.
Not much has been studied about the type or extent of information encoded in the pre-trained representations themselves.
arXiv Detail & Related papers (2021-07-10T02:13:25Z) - Mixed-Lingual Pre-training for Cross-lingual Summarization [54.4823498438831]
Cross-lingual Summarization aims at producing a summary in the target language for an article in the source language.
We propose a solution based on mixed-lingual pre-training that leverages both cross-lingual tasks like translation and monolingual tasks like masked language models.
Our model achieves an improvement of 2.82 (English to Chinese) and 1.15 (Chinese to English) ROUGE-1 scores over state-of-the-art results.
arXiv Detail & Related papers (2020-10-18T00:21:53Z) - Joint Contextual Modeling for ASR Correction and Language Understanding [60.230013453699975]
We propose multi-task neural approaches to perform contextual language correction on ASR outputs jointly with language understanding (LU)
We show that the error rates of off the shelf ASR and following LU systems can be reduced significantly by 14% relative with joint models trained using small amounts of in-domain data.
arXiv Detail & Related papers (2020-01-28T22:09:25Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.