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Designing Representations of Behavioral Data with Blended Causality: An Approach to Interventions for Lifestyle Habits

机译:设计具有混合因果关系的行为数据表示:一种干预生活方式习惯的方法

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Many personal informatics systems present users' behavioral data in numbers or graphs for their reflection, which may not be effective on a daily basis because people do not always act like data scientists. Representation of behavioral data in virtual environments can provide information at a glance. Grounded in conceptual blending theory, insights from social psychology, and existing persuasive design principles, this article is conceptual-theoretical. It argues that representations should be designed like virtual consequences of behavior and related to users' existing knowledge of comparable cause-effect relationships in order to prompt one's imaginative beliefs about the behavioral-virtual causality. It proposes a framework that guides designing representations of behavioral data, including (1) identifying scenarios with comparable causality, (2) examining and grounding the mappings in embodied experiences, (3) performing blends between the behavior and the identified scenario, with different virtual consequences corresponding to different user behaviors, and (4) rendering virtual consequences as feedback that dynamically anchors the scenario for similar blends in users. Design cases are presented and analyzed to demonstrate how embodied mappings can be constructed for interventions for lifestyle habits.
机译:许多个人信息系统以数字或图形的形式呈现用户的行为数据以供其反映,由于人们并不总是像数据科学家那样行事,因此每天可能无效。虚拟环境中行为数据的表示可以一目了然地提供信息。本文以概念融合理论,社会心理学的见识以及现有的说服性设计原则为基础,是概念论的。它认为,表示的设计应类似于行为的虚拟后果,并与用户对可比的因果关系的现有知识有关,以便激发人们对行为与虚拟因果关系的想象力。它提出了一个框架来指导行为数据的设计表示,包括(1)识别具有可比因果关系的场景,(2)在具体体验中检查和建立映射,(3)使用不同的虚拟方法在行为和已识别的场景之间进行混合对应于不同用户行为的后果,以及(4)将虚拟后果呈现为动态锚定场景以进行用户中类似混合的反馈。提出并分析了设计案例,以说明如何为生活习惯的干预构建体现的映射。

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