English

Toward Practical Automatic Speech Recognition and Post-Processing: a Call for Explainable Error Benchmark Guideline

Computation and Language 2024-01-29 v1

Abstract

Automatic speech recognition (ASR) outcomes serve as input for downstream tasks, substantially impacting the satisfaction level of end-users. Hence, the diagnosis and enhancement of the vulnerabilities present in the ASR model bear significant importance. However, traditional evaluation methodologies of ASR systems generate a singular, composite quantitative metric, which fails to provide comprehensive insight into specific vulnerabilities. This lack of detail extends to the post-processing stage, resulting in further obfuscation of potential weaknesses. Despite an ASR model's ability to recognize utterances accurately, subpar readability can negatively affect user satisfaction, giving rise to a trade-off between recognition accuracy and user-friendliness. To effectively address this, it is imperative to consider both the speech-level, crucial for recognition accuracy, and the text-level, critical for user-friendliness. Consequently, we propose the development of an Error Explainable Benchmark (EEB) dataset. This dataset, while considering both speech- and text-level, enables a granular understanding of the model's shortcomings. Our proposition provides a structured pathway for a more `real-world-centric' evaluation, a marked shift away from abstracted, traditional methods, allowing for the detection and rectification of nuanced system weaknesses, ultimately aiming for an improved user experience.

Keywords

Cite

@article{arxiv.2401.14625,
  title  = {Toward Practical Automatic Speech Recognition and Post-Processing: a Call for Explainable Error Benchmark Guideline},
  author = {Seonmin Koo and Chanjun Park and Jinsung Kim and Jaehyung Seo and Sugyeong Eo and Hyeonseok Moon and Heuiseok Lim},
  journal= {arXiv preprint arXiv:2401.14625},
  year   = {2024}
}

Comments

Accepted for Data-centric Machine Learning Research (DMLR) Workshop at ICML 2023

R2 v1 2026-06-28T14:27:45.616Z