Maximizing users comfort levels through user preference estimation in public smartspaces

Shinya Yamamoto, Naoya Kouyama, K. Yasumoto, Minoru Ito
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引用次数: 9

Abstract

In recent years, the ubiquitous computing system attracts people's attention as the system to provide useful services (e.g., automatic temperature control) without explicit operations by users. There are many existing methods for controlling appliances according to the user's preference by describing each user's preference and rules. However, these methods cannot be applied to public spaces where many general users with different preferences exist. In this paper, we propose an architecture and a method for controlling devices that affect the users comfort level (e.g., air conditioner) in public smartspaces. Our goal is to maximize the comfort level of users with various preferences by appropriately controlling devices. Furthermore, to efficiently collect user preferences for the large context domain, we propose a method for estimating user's comfort level for an unknown context from the already known user's comfort level for some contexts and the distance to those contexts. To evaluate the proposed estimation method, we conducted the questionnaire to measure the user's comfort levels for various contexts, and evaluated the accuracy of the proposed estimation method by comparing the measured sample with the estimated one. As a result, our method estimated user's comfort level in error within 1 among 4 comfort levels.
通过对公共智能空间的用户偏好评估,最大限度地提高用户的舒适度
近年来,普适计算系统因其无需用户明确操作即可提供有用服务(如温度自动控制)而受到人们的关注。现有的许多方法通过描述每个用户的偏好和规则来根据用户的偏好控制设备。然而,这些方法并不适用于公共空间,因为公共空间中存在许多具有不同偏好的普通用户。在本文中,我们提出了一种架构和方法来控制公共智能空间中影响用户舒适度的设备(例如空调)。我们的目标是通过适当地控制设备,最大限度地提高用户对各种偏好的舒适度。此外,为了有效地收集大上下文域的用户偏好,我们提出了一种方法,通过已知用户对某些上下文的舒适度和到这些上下文的距离来估计用户对未知上下文的舒适度。为了评估所提出的估计方法,我们进行了问卷调查,测量用户在各种情况下的舒适度,并通过比较测量样本和估计样本来评估所提出的估计方法的准确性。因此,我们的方法估计用户的舒适度误差在4个舒适度中的1个以内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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