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Multi-Layered Interfaces to Improve Older Adults' Initial Learnability of Mobile Applications

机译:多层接口,可提高老年人对移动应用程序的初始学习能力

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摘要

Mobile computing devices can offer older adults (ages 65+) support in their daily lives, but older adults often find such devices difficult to learn and use. One potential design approach to improve the learnability of mobile devices is a Multi-Layered (ML) interface, where novice users start with a reduced-functionality interface layer that only allows them to perform basic tasks, before progressing to a more complex interface layer when they are comfortable. We studied the effects of a ML interface on older adults' performance in learning tasks on a mobile device. We conducted a controlled experiment with 16 older (ages 65-81) and 16 younger participants (age 21-36), who performed tasks on either a 2-layer or a nonlayered (control) address book application, implemented on a commercial smart phone. We found that the ML interface's Reduced-Functionality layer, compared to the control's Full-Functionality layer, better helped users to master a set of basic tasks and to retain that ability 30 minutes later. When users transitioned from the Reduced-Functionality to the Full-Functionality interface layer, their performance on the previously learned tasks was negatively affected, but no negative impact was found on learning new, advanced tasks. Overall, the ML interface provided greater benefit for older participants than for younger participants in terms of task completion time during initial learning, perceived complexity, and preference. We discuss how the ML interface approach is suitable for improving the learnability of mobile applications, particularly for older adults.
机译:移动计算设备可以在日常生活中为65岁以上的老年人提供支持,但是老年人通常会发现此类设备难以学习和使用。多层(ML)界面是提高移动设备可学习性的一种潜在设计方法,在该界面中,新手用户从功能简化的界面层入手,该界面层仅允许他们执行基本任务,然后再发展为更复杂的界面层他们很舒服。我们研究了ML接口对老年人在移动设备上学习任务的性能的影响。我们对16位年龄较大(65-81岁)和16位较年轻的参与者(21-36岁)进行了对照实验,他们在商用智能电话上实现的2层或非分层(控制)地址簿应用程序上执行任务。我们发现,与控件的“全功能”层相比,ML接口的“缩减功能”层可以更好地帮助用户掌握一组基本任务并在30分钟后保留该功能。当用户从缩减功能界面过渡到全功能界面层时,他们在先前学习的任务上的性能受到负面影响,但在学习新的高级任务时未发现负面影响。总体而言,就初始学习期间的任务完成时间,感知的复杂性和偏好而言,ML界面为年长的参与者提供的收益比年青的参与者更大。我们讨论了ML接口方法如何适合提高移动应用程序的学习能力,特别是对于成年人。

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  • 来源
    《ACM transactions on accessible computing》 |2010年第1期|p.1:1-1:30|共30页
  • 作者单位

    Department of Computer Science, University of British Columbia, Vancouver, Canada;

    Information School, University of Washington, Seattle, WA;

    Department of Computer Science, University of British Columbia, Vancouver, Canada;

    Department of Psychology, University of British Columbia, Vancouver, Canada;

    Department of Computer Science, University of British Columbia, Vancouver, Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    design; experimentation; human factors;

    机译:设计;实验人为因素;
  • 入库时间 2022-08-18 00:37:34

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