Many data-intensive applications that use machine learning or
artificial intelligence techniques depend on humans providing the
initial dataset, enabling algorithms to process the rest or for other
humans to evaluate the performance of such algorithms. Not only can
labeled data for training and evaluation be collected faster, cheaper,
and easier than ever before, but we now see the emergence of hybrid
human-machine software that combines computations performed by humans
and machines in conjunction. There are, however, real-world practical
issues with the adoption of human computation and crowdsourcing.
Building systems and data processing pipelines that require crowd
computing remains difficult. In this book, we present practical
considerations for designing and implementing tasks that require the
use of humans and machines in combination with the goal of producing
high-quality labels.
Read more
Product details
ISBN
9783031023187
Published
2022
Publisher
Springer Nature
Language
Product language
Engelsk
Format
Product format
Digital bok
Author