Minority Reports: Balancing Cost and Quality in Ground Truth Data Annotation
Journal:
arXiv
Published Date:
Apr 12, 2025
Abstract
High-quality data annotation is an essential but laborious and costly aspect
of developing machine learning-based software. We explore the inherent tradeoff
between annotation accuracy and cost by detecting and removing minority reports
-- instances where annotators provide incorrect responses -- that indicate
unnecessary redundancy in task assignments. We propose an approach to prune
potentially redundant annotation task assignments before they are executed by
estimating the likelihood of an annotator disagreeing with the majority vote
for a given task. Our approach is informed by an empirical analysis over
computer vision datasets annotated by a professional data annotation platform,
which reveals that the likelihood of a minority report event is dependent
primarily on image ambiguity, worker variability, and worker fatigue.
Simulations over these datasets show that we can reduce the number of
annotations required by over 60% with a small compromise in label quality,
saving approximately 6.6 days-equivalent of labor. Our approach provides
annotation service platforms with a method to balance cost and dataset quality.
Machine learning practitioners can tailor annotation accuracy levels according
to specific application needs, thereby optimizing budget allocation while
maintaining the data quality necessary for critical settings like autonomous
driving technology.