Computer Science > Human-Computer Interaction
[Submitted on 16 Jan 2024]
Title:Belief Miner: A Methodology for Discovering Causal Beliefs and Causal Illusions from General Populations
View PDFAbstract:Causal belief is a cognitive practice that humans apply everyday to reason about cause and effect relations between factors, phenomena, or events. Like optical illusions, humans are prone to drawing causal relations between events that are only coincidental (i.e., causal illusions). Researchers in domains such as cognitive psychology and healthcare often use logistically expensive experiments to understand causal beliefs and illusions. In this paper, we propose Belief Miner, a crowdsourcing method for evaluating people's causal beliefs and illusions. Our method uses the (dis)similarities between the causal relations collected from the crowds and experts to surface the causal beliefs and illusions. Through an iterative design process, we developed a web-based interface for collecting causal relations from a target population. We then conducted a crowdsourced experiment with 101 workers on Amazon Mechanical Turk and Prolific using this interface and analyzed the collected data with Belief Miner. We discovered a variety of causal beliefs and potential illusions, and we report the design implications for future research.
Submission history
From: Shahreen Salim Aunti [view email][v1] Tue, 16 Jan 2024 00:17:57 UTC (37,492 KB)
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