首页> 外文会议>Proceedings of the 17th annual international conference on mobile computing and networking. >SociableSense: Exploring the Trade-offs of Adaptive Sampling and Computation Offloading for Social Sensing
【24h】

SociableSense: Exploring the Trade-offs of Adaptive Sampling and Computation Offloading for Social Sensing

机译:SociableSense:探索社交感知的自适应采样和计算分流的权衡

获取原文
获取原文并翻译 | 示例

摘要

The interactions and social relations among users in workplaces have been studied by many generations of social psychologists. There is evidence that groups of users that interact more in workplaces are more productive. However, it is still hard for social scientists to capture fine-grained data about phenomena of this kind and to find the right means to facilitate interaction. It is also difficult for users to keep track of their level of sociability with colleagues. While mobile phones offer a fantastic platform for harvesting long term and fine grained data, they also pose challenges: battery power is limited and needs to be traded-off for sensor reading accuracy and data transmission, while energy costs in processing computationally intensive tasks are high. In this paper, we propose SociableSense, a smart phones based platform that captures user behavior in office environments, while providing the users with a quantitative measure of their sociability and that of colleagues. We tackle the technical challenges of building such a tool: the system provides an adaptive sampling mechanism as well as models to decide whether to perform computation of tasks, such as the execution of classification and inference algorithms, locally or remotely. We perform several micro-benchmark tests to fine-tune and evaluate the performance of these mechanisms and we show that the adaptive sampling and computation distribution schemes balance trade-offs among accuracy, energy, latency, and data traffic. Finally, by means of a social psychological study with ten participants for two working weeks, we demonstrate that SociableSense fosters interactions among the participants and helps in enhancing their sociability.
机译:许多代社会心理学家已经研究了工作场所用户之间的互动和社会关系。有证据表明,在工作场所中进行更多交互的用户群体更具生产力。但是,对于社会科学家而言,仍然很难捕获有关此类现象的细粒度数据并找到促进交互的正确方法。用户也很难跟踪他们与同事之间的社交能力。尽管移动电话提供了一个收集长期和细粒度数据的理想平台,但它们也带来了挑战:电池电量有限,需要权衡以获取传感器读取精度和数据传输,而处理计算密集型任务的能源成本却很高。 。在本文中,我们提出了SociableSense,这是一个基于智能手机的平台,可以捕获办公环境中的用户行为,同时为用户提供对其社交能力和同事社交能力的定量度量。我们解决了构建此类工具的技术挑战:系统提供了一种自适应采样机制以及用于决定是否要本地或远程执行任务计算(例如执行分类和推理算法)的模型。我们执行了几个微基准测试来微调和评估这些机制的性能,并表明自适应采样和计算分配方案可以在准确性,能量,延迟和数据流量之间进行权衡。最后,通过对十名参与者进行为期两个工作周的社会心理学研究,我们证明SociableSense促进了参与者之间的互动,并有助于增强他们的社交能力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号