This is a second-time workshop that is happening in conjunction with the IEEE Visualization Conference, scheduled to take place in New Orleans, Louisiana, USA in October 2021. We will share all the relevant news and updates about the workshop on this website.
This workshop invites contributions that provide a user-centered perspective on how human-machine trust, domain expert knowledge, and familiarity with data science methods influence the use and adoption of visual analytics techniques and systems. The goal is to discuss and discover challenges and future directions regarding these issues by proposing design guidelines, empirical findings, and visual analytic techniques.
Sponsor Type:1
Workshop suggested topics are as followed:
Trust considerations based on different areas of domain expertise (e.g., medical, security, scientific, financial domains).
Trust and bias considerations based on different levels of user familiarity with machine learning and visual analytics systems.
Detecting and preventing cognitive biases in visual analytics and machine learning for users.
User trust in machine learning models and visual explanations of model decisions in visual analytics systems.
The correlation between trust, domain knowledge, and potential cognitive biases.
The relationship between domain expertise and trust with model transparency, human interpretability.
The relationship between model interpretability, domain expertise, and trust.
Human-centered considerations in Human-in-the-loop visualization tools and interpretable models.
10月24日
2021
10月25日
2021
初稿截稿日期
初稿录用通知日期
注册截止日期
2022年10月16日 美国 Oklahoma City
2022 IEEE Workshop on TRust and EXpertise in Visual Analytics
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