English

Transcribing Against Time

Computation and Language 2017-09-18 v1

Abstract

We investigate the problem of manually correcting errors from an automatic speech transcript in a cost-sensitive fashion. This is done by specifying a fixed time budget, and then automatically choosing location and size of segments for correction such that the number of corrected errors is maximized. The core components, as suggested by previous research [1], are a utility model that estimates the number of errors in a particular segment, and a cost model that estimates annotation effort for the segment. In this work we propose a dynamic updating framework that allows for the training of cost models during the ongoing transcription process. This removes the need for transcriber enrollment prior to the actual transcription, and improves correction efficiency by allowing highly transcriber-adaptive cost modeling. We first confirm and analyze the improvements afforded by this method in a simulated study. We then conduct a realistic user study, observing efficiency improvements of 15% relative on average, and 42% for the participants who deviated most strongly from our initial, transcriber-agnostic cost model. Moreover, we find that our updating framework can capture dynamically changing factors, such as transcriber fatigue and topic familiarity, which we observe to have a large influence on the transcriber's working behavior.

Keywords

Cite

@article{arxiv.1709.05227,
  title  = {Transcribing Against Time},
  author = {Matthias Sperber and Graham Neubig and Jan Niehues and Satoshi Nakamura and Alex Waibel},
  journal= {arXiv preprint arXiv:1709.05227},
  year   = {2017}
}

Comments

Speech Communication, Oct 2017 (preprint)

R2 v1 2026-06-22T21:44:26.727Z