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Main Authors: Robatian, Amin, Hajipour, Mohammad, Peyghan, Mohammad Reza, Rajabi, Fatemeh, Amini, Sajjad, Ghaemmaghami, Shahrokh, Gholampour, Iman
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.10734
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author Robatian, Amin
Hajipour, Mohammad
Peyghan, Mohammad Reza
Rajabi, Fatemeh
Amini, Sajjad
Ghaemmaghami, Shahrokh
Gholampour, Iman
author_facet Robatian, Amin
Hajipour, Mohammad
Peyghan, Mohammad Reza
Rajabi, Fatemeh
Amini, Sajjad
Ghaemmaghami, Shahrokh
Gholampour, Iman
contents Automatic Speech Recognition (ASR) systems have demonstrated remarkable performance across various applications. However, limited data and the unique language features of specific domains, such as low-resource languages, significantly degrade their performance and lead to higher Word Error Rates (WER). In this study, we propose Generative Error Correction via Retrieval-Augmented Generation (GEC-RAG), a novel approach designed to improve ASR accuracy for low-resource domains, like Persian. Our approach treats the ASR system as a black-box, a common practice in cloud-based services, and proposes a Retrieval-Augmented Generation (RAG) approach within the In-Context Learning (ICL) scheme to enhance the quality of ASR predictions. By constructing a knowledge base that pairs ASR predictions (1-best and 5-best hypotheses) with their corresponding ground truths, GEC-RAG retrieves lexically similar examples to the ASR transcription using the Term Frequency-Inverse Document Frequency (TF-IDF) measure. This process provides relevant error patterns of the system alongside the ASR transcription to the Generative Large Language Model (LLM), enabling targeted corrections. Our results demonstrate that this strategy significantly reduces WER in Persian and highlights a potential for domain adaptation and low-resource scenarios. This research underscores the effectiveness of using RAG in enhancing ASR systems without requiring direct model modification or fine-tuning, making it adaptable to any domain by simply updating the transcription knowledge base with domain-specific data.
format Preprint
id arxiv_https___arxiv_org_abs_2501_10734
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GEC-RAG: Improving Generative Error Correction via Retrieval-Augmented Generation for Automatic Speech Recognition Systems
Robatian, Amin
Hajipour, Mohammad
Peyghan, Mohammad Reza
Rajabi, Fatemeh
Amini, Sajjad
Ghaemmaghami, Shahrokh
Gholampour, Iman
Audio and Speech Processing
Artificial Intelligence
Sound
Automatic Speech Recognition (ASR) systems have demonstrated remarkable performance across various applications. However, limited data and the unique language features of specific domains, such as low-resource languages, significantly degrade their performance and lead to higher Word Error Rates (WER). In this study, we propose Generative Error Correction via Retrieval-Augmented Generation (GEC-RAG), a novel approach designed to improve ASR accuracy for low-resource domains, like Persian. Our approach treats the ASR system as a black-box, a common practice in cloud-based services, and proposes a Retrieval-Augmented Generation (RAG) approach within the In-Context Learning (ICL) scheme to enhance the quality of ASR predictions. By constructing a knowledge base that pairs ASR predictions (1-best and 5-best hypotheses) with their corresponding ground truths, GEC-RAG retrieves lexically similar examples to the ASR transcription using the Term Frequency-Inverse Document Frequency (TF-IDF) measure. This process provides relevant error patterns of the system alongside the ASR transcription to the Generative Large Language Model (LLM), enabling targeted corrections. Our results demonstrate that this strategy significantly reduces WER in Persian and highlights a potential for domain adaptation and low-resource scenarios. This research underscores the effectiveness of using RAG in enhancing ASR systems without requiring direct model modification or fine-tuning, making it adaptable to any domain by simply updating the transcription knowledge base with domain-specific data.
title GEC-RAG: Improving Generative Error Correction via Retrieval-Augmented Generation for Automatic Speech Recognition Systems
topic Audio and Speech Processing
Artificial Intelligence
Sound
url https://arxiv.org/abs/2501.10734