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DESIGN PREFERENCE PREDICTION WITH DATA PRIVACY SAFEGUARDS: A PRELIMINARY STUDY

机译:设计偏好预测数据隐私保障:初步研究

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Design preference models are used widely in product planning and design development. Their prediction accuracy requires large amounts of personal user data including purchase and other personal choice records. With increased Internet and smart device use, sources of personal data are becoming more varied and their capture more ubiquitous. This situation leads to questioning whether there is a trade off between improving products and compromising individual user privacy. To advance this conversation, we analyze how privacy safeguards may affect design preference modeling. We conduct an experiment using real user data to study the performance of design preference models under different levels of privacy. Results indicate there is a tradeoff between accuracy and privacy. However, with enough data, models with privacy safeguards can still be sufficiently accurate to answer population-level design questions.
机译:设计偏好型号广泛用于产品规划和设计开发。它们的预测准确性需要大量的个人用户数据,包括购买和其他个人选择记录。随着互联网和智能设备的使用增加,个人数据的来源变得更加多样化,它们的捕获更加多样化。这种情况导致质疑改进产品之间是否有折衷和妥协个人用户隐私。为了推进这次谈话,我们分析隐私保护可能会影响设计偏好建模的程度。我们使用真实用户数据进行实验,以研究不同层次的隐私层面的设计偏好模型的性能。结果表明,准确性和隐私之间存在权衡。但是,有足够的数据,具有隐私保障的模型仍然可以足够准确以回答人口级设计问题。

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