Exploiting Meta-Cognitive Features for a Machine-Learning-Based One-Shot Group-Decision Aggregation
Hilla Shinitzky, Yuval Shahar, Dan Avraham, Yizhak Vaisman, Yakir, Tsizer, Yaniv Leedon

TL;DR
This paper introduces a machine-learning approach utilizing meta-cognitive features for one-shot group decision aggregation, significantly improving accuracy over traditional methods in crowdsourcing tasks.
Contribution
It proposes two novel feature-representation methods and a one-shot ML-based aggregation technique that adapts to various situations without relying on crowd history.
Findings
20% to 35% increase in success rate compared to standard methods
Effective prediction of response and answer correctness using ML models
Demonstrated robustness across different tasks and crowd compositions
Abstract
The outcome of a collective decision-making process, such as crowdsourcing, often relies on the procedure through which the perspectives of its individual members are aggregated. Popular aggregation methods, such as the majority rule, often fail to produce the optimal result, especially in high-complexity tasks. Methods that rely on meta-cognitive information, such as confidence-based methods and the Surprisingly Popular Option, had shown an improvement in various tasks. However, there is still a significant number of cases with no optimal solution. Our aim is to exploit meta-cognitive information and to learn from it, for the purpose of enhancing the ability of the group to produce a correct answer. Specifically, we propose two different feature-representation approaches: (1) Response-Centered feature Representation (RCR), which focuses on the characteristics of the individual response…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing
