Mixed-initiative visual analytics systems incorporate well-established design principles that improve users' abilities to solve problems. As these systems consider whether to take initiative towards achieving user goals, many current systems address the potential for cognitive bias in human initiatives statically, relying on fixed initiatives they can take instead of identifying, communicating and addressing the bias as it occurs. We argue that mixed-initiative design principles can and should incorporate cognitive bias mitigation strategies directly through development of mitigation techniques embedded in the system to address cognitive biases in situ. We identify domain experts in machine learning adopting visual analytics techniques and systems that incorporate existing mixed-initiative principles and examine their potential to support bias mitigation strategies. This examination considers the unique perspective these experts bring to visual analytics and is situated in existing user-centered systems that make exemplary use of design principles informed by cognitive theory. We then suggest informed opportunities for domain experts to take initiative toward addressing cognitive biases in light of their existing contributions to the field. Finally, we contribute open questions and research directions for designers seeking to adopt visual analytics techniques that incorporate bias-aware initiatives in future systems.
翻译:在考虑是否采取主动以实现用户目标时,许多现有系统静态地处理人类倡议中认知偏差的可能性,依靠它们能够采取的固定举措,而不是在出现时发现、沟通和解决偏见。我们争辩说,混合倡议设计原则可以而且应该直接纳入认知偏差减缓战略,方法是开发系统中嵌入的缓解技术,解决现场认知偏差。我们确定在机器学习中采用视觉分析技术和系统,纳入现有混合倡议原则并研究其支持偏差缓解战略的潜力的域专家。这一审查考虑到这些专家给视觉分析带来的独特观点,并且位于现有的以用户为中心的系统中,这些系统以示范性地利用以认知理论为依据的设计原则。我们随后建议,域专家有知情的机会,根据其对实地的现有贡献,主动解决认知偏差。最后,我们为寻求采用视觉分析技术,将偏差意识举措纳入未来系统的设计师提供开放的问题和研究方向。