Knowing Your Annotator: Rapidly Testing the Reliability of Affect Annotation
August 30, 2023 Β· Declared Dead Β· π 2023 11th International Conference on Affective Computing and Intelligent Interaction Workshops and Demos (ACIIW)
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Authors
Matthew Barthet, Chintan Trivedi, Kosmas Pinitas, Emmanouil Xylakis, Konstantinos Makantasis, Antonios Liapis, Georgios N. Yannakakis
arXiv ID
2308.16029
Category
cs.HC: Human-Computer Interaction
Citations
5
Venue
2023 11th International Conference on Affective Computing and Intelligent Interaction Workshops and Demos (ACIIW)
Last Checked
4 months ago
Abstract
The laborious and costly nature of affect annotation is a key detrimental factor for obtaining large scale corpora with valid and reliable affect labels. Motivated by the lack of tools that can effectively determine an annotator's reliability, this paper proposes general quality assurance (QA) tests for real-time continuous annotation tasks. Assuming that the annotation tasks rely on stimuli with audiovisual components, such as videos, we propose and evaluate two QA tests: a visual and an auditory QA test. We validate the QA tool across 20 annotators that are asked to go through the test followed by a lengthy task of annotating the engagement of gameplay videos. Our findings suggest that the proposed QA tool reveals, unsurprisingly, that trained annotators are more reliable than the best of untrained crowdworkers we could employ. Importantly, the QA tool introduced can predict effectively the reliability of an affect annotator with 80% accuracy, thereby, saving on resources, effort and cost, and maximizing the reliability of labels solicited in affective corpora. The introduced QA tool is available and accessible through the PAGAN annotation platform.
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