消除本地企业和服务的众包数量特征

W. Ouyang, Lance M. Kaplan, Paul D. Martin, Alice Toniolo, M. Srivastava, T. Norman
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引用次数: 38

摘要

有关当地商业和服务的定量特征的信息,例如在咖啡馆排队等候的人数和健身房可用健身器材的数量,对于明智的决策、人群管理和事件检测非常重要。在本文中,我们研究了利用人群作为传感器来报告这些定量特征的潜力,并研究了如何从嘈杂的众包信息中恢复真实的数量值。通过实验,我们发现群体传感器在数量感知中存在偏差和方差,任务难度影响感知精度。基于这些发现,我们提出了一个无监督概率模型来联合评估任务难度、人群传感器的能力和真实数量值。我们的模型不同于现有的分类真理发现模型,因为我们的模型是专门为解决定量真理而设计的。除了在批处理模式下设计一个高效的模型推理算法外,我们还设计了一个更快的在线版本来处理流数据。各种场景下的实验结果证明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Debiasing crowdsourced quantitative characteristics in local businesses and services
Information about quantitative characteristics in local businesses and services, such as the number of people waiting in line in a cafe and the number of available fitness machines in a gym, is important for informed decision, crowd management and event detection. In this paper, we investigate the potential of leveraging crowds as sensors to report such quantitative characteristics and investigate how to recover the true quantity values from noisy crowdsourced information. Through experiments, we find that crowd sensors have both bias and variance in quantity sensing, and task difficulties impact the sensing accuracy. Based on these findings, we propose an unsupervised probabilistic model to jointly assess task difficulties, ability of crowd sensors and true quantity values. Our model differs from existing categorical truth finding models as ours is specifically designed to tackle quantitative truth. In addition to devising an efficient model inference algorithm in a batch mode, we also design an even faster online version for handling streaming data. Experimental results in various scenarios demonstrate the effectiveness of our model.
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