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Design and Evaluation of a Predictive Model for Smartphone Selection

机译:智能手机选择预测模型的设计与评估

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Selecting a mobile phone is a very subjective process; consumers often base their decisions on advertising and their personal expectations for the device. In order to provide consumers with simpler and more objective information, a predictive model for smartphone selection has been developed. Four of the most popular mobile devices were used for the development of this model: Apple's iPhone, Google's Android, Microsoft's Windows and Research In Motion's BlackBerry. Everyday tasks, common to smartphone users, were identified and modeled, using the Keystroke Level Model. Fitts' Law was used to provide additional objective data based on the dimensions and layout of the mobile phone screen. These objective measures were integrated with user preferences, to identify which smartphone would provide superior operation and performance for the features most desired by the smartphone consumer. Research outcomes from this project include the identification of the mobile devices that performed common tasks with efficiency and a user-task model predicting user smartphone selection based on individual utility and task frequency.
机译:选择手机是一个非常主观的过程;消费者经常基于他们对设备的广告和个人期望的决定。为了提供更简单和更多客观信息的消费者,已经开发了一种用于智能手机选择的预测模型。四种最受欢迎​​的移动设备用于此模型的开发:Apple的iPhone,Google的Android,Microsoft的Windows和Motion BlackBerry的研究。智能手机用户共同的日常任务是使用击键级模型进行识别和建模的。 FITTS定律用于根据手机屏幕的尺寸和布局提供额外的客观数据。这些客观措施与用户偏好集成,以确定哪个智能手机为智能手机消费者最常期望的功能提供卓越的操作和性能。来自该项目的研究结果包括使用效率和用户任务模型来预测基于单个实用程序和任务频率的用户智能电话选择的移动设备的识别。

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