Body-centric computing: results from a weeklong Dagstuhl seminar in a German castle

Florian "Floyd" Mueller, Josh Andres, Joe Marshall, Dag Svanæs, M C Schraefel, Kathrin Maria Gerling, Jakob Tholander, Anna Lisa Martin-Niedecken, Elena Marquez Segura, Elis van den Hoven, T C Nicholas Graham

    Research output: Contribution to journalArticlepeer-review

    Abstract

    Human labeling of training data is often a time-consuming, expensive part of machine learning. In this paper, we study "batch labeling", an AI-assisted UX paradigm, that aids data labelers by allowing a single labeling action to apply to multiple records. We ran a large scale study on Mechanical Turk with 156 participants to investigate labeler-AI-batching system interaction. We investigate the efficacy of the system when compared to a single-item labeling interface (i.e., labeling one record at-a-time), and evaluate the impact of batch labeling on accuracy and time. We further investigate the impact of AI algorithm quality and its effects on the labelers' overreliance, as well as potential mechanisms for mitigating it. Our work offers implications for the design of batch labeling systems and for work practices focusing on labeler-AI-batching system interaction.
    Original languageEnglish
    JournalInteractions
    Volume5
    Issue numberCSCW1
    DOIs
    Publication statusPublished - 2018

    Fingerprint

    Dive into the research topics of 'Body-centric computing: results from a weeklong Dagstuhl seminar in a German castle'. Together they form a unique fingerprint.

    Cite this