CLASJun 16, 2025

NTU Speechlab LLM-Based Multilingual ASR System for Interspeech MLC-SLM Challenge 2025

arXiv:2506.13339v21 citationsh-index: 13Workshop on Multilingual Conversational Speech Language Model (MLC-SLM)
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for researchers in speech recognition, focusing on a specific challenge task.

The paper tackled multilingual automatic speech recognition for the Interspeech MLC-SLM Challenge, reducing the average Mix Error Rate from 20.2% to 10.6% with a relative improvement of 48%.

This report details the NTU Speechlab system developed for the Interspeech 2025 Multilingual Conversational Speech and Language Model (MLC-SLM) Challenge (Task I), where we achieved 5th place. We present comprehensive analyses of our multilingual automatic speech recognition system, highlighting key advancements in model architecture, data selection, and training strategies. In particular, language-specific prompts and model averaging techniques were instrumental in boosting system performance across diverse languages. Compared to the initial baseline system, our final model reduced the average Mix Error Rate from 20.2% to 10.6%, representing an absolute improvement of 9.6% (a relative improvement of 48%) on the evaluation set. Our results demonstrate the effectiveness of our approach and offer practical insights for future Speech Large Language Models.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes