Your Behavior Signals Your Reliability: Modeling Crowd Behavioral Traces to Ensure Quality Relevance Annotations
Author | Goyal, Tanya |
Author | McDonnell, Tyler |
Author | Kutlu, Mucahid |
Author | Elsayed, Tamer |
Author | Lease, Matthew |
Available date | 2024-02-21T08:13:41Z |
Publication Date | 2018-06-15 |
Publication Name | Proceedings of the 6th AAAI Conference on Human Computation and Crowdsourcing, HCOMP 2018 |
Identifier | http://dx.doi.org/10.1609/hcomp.v6i1.13331 |
Citation | Goyal, T., McDonnell, T., Kutlu, M., Elsayed, T., & Lease, M. (2018, June). Your behavior signals your reliability: Modeling crowd behavioral traces to ensure quality relevance annotations. In Proceedings of the AAAI Conference on Human Computation and Crowdsourcing (Vol. 6, pp. 41-49). |
ISSN | 978-157735799-5 |
Abstract | While peer-agreement and gold checks are well-established methods for ensuring quality in crowdsourced data collection, we explore a relatively new direction for quality control: estimating work quality directly from workers' behavioral traces collected during annotation. We propose three behavior-based models to predict label correctness and worker accuracy, then further apply model predictions to label aggregation and optimization of label collection. As part of this work, we collect and share a new Mechanical Turk dataset of behavioral signals judging the relevance of search results. Results show that behavioral data can be effectively used to predict work quality, which could be especially useful with single labeling or in a cold start scenario in which individuals' prior work history is unavailable. We further show improvement in label aggregation and reducing labeling cost while ensuring data quality. |
Sponsor | We thank the many talented crowd members who contributed to our study, and the reviewers for their valuable feedback. This work was made possible by NPRP grant# NPRP 7-1313-1-245 from the Qatar National Research Fund (a member of Qatar Foundation). |
Language | en |
Publisher | AAAI Press |
Subject | Forecasting Artificial intelligence |
Type | Conference Paper |
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