Embracing Transparency: A Study of Open Science Practices Among Early Career HCI Researchers
October 05, 2024 Β· Declared Dead Β· + Add venue
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Authors
Tatiana Chakravorti, Sanjana Gautam, Sarah M. Rajtmajer
arXiv ID
2410.04286
Category
cs.HC: Human-Computer Interaction
Citations
2
Last Checked
4 months ago
Abstract
Many fields of science, including Human-Computer Interaction (HCI), have heightened introspection in the wake of concerns around reproducibility and replicability of published findings. Notably, in recent years the HCI community has worked to implement policy changes and mainstream open science practices. Our work investigates early-career HCI researchers' perceptions of open science and engagement with best practices through 18 semi-structured interviews. Our findings highlight key barriers to the widespread adoption of data and materials sharing, and preregistration, namely: lack of clear incentives; cultural resistance; limited training; time constraints; concerns about intellectual property; and data privacy issues. We observe that small changes at major conferences like CHI could meaningfully impact community norms. We offer recommendations to address these barriers and to promote transparency and openness in HCI. While these findings provide valuable and interesting insights about the open science practices by early career HCI researchers, their applicability is limited to the USA only. The interview study relies on self-reported data; therefore, it can be subject to biases like recall bias. Future studies will include the scope to expand HCI researchers from different levels of experience and different countries, allowing for more justifiable examples.
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