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Community-Guided Learning: Exploiting Mobile Sensor Users to Model Human Behavior

机译:社区指导的学习:利用移动传感器用户为人类行为建模

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摘要

Modeling human behavior requires vast quantities of accurately labeled training data, but for ubiquitous people-aware applications such data is rarely attainable. Even researchers make mistakes when labeling data, and consistent, reliable labels from low-commitment users are rare. In particular, users may give identical labels to activities with characteristically different signatures (e.g., labeling eating at home or at a restaurant as "dinner") or may give different labels to the same context (e.g., "work" vs. "office"). In this scenario, labels are unreliable but nonetheless contain valuable information for classification. To facilitate learning in such unconstrained labeling scenarios, we propose Community-Guided Learning (CGL), a framework that allows existing classifiers to learn robustly from unreliably-labeled user-submitted data. CGL exploits the underlying structure in the data and the unconstrained labels to intelligently group crowd-sourced data. We demonstrate how to use similarity measures to determine when and how to split and merge contributions from different labeled categories and present experimental results that demonstrate the effectiveness of our framework.
机译:对人类行为进行建模需要大量带有准确标签的训练数据,但是对于无所不在的人们感知的应用而言,此类数据很难获得。即使是研究人员,在标记数据时也会犯错误,而且很少有人会为低承诺用户提供一致,可靠的标签。特别地,用户可以给具有相同特征的签名的活动赋予相同的标签(例如,将在家或在餐厅吃饭的标签标记为“晚餐”),或者可以给相同的上下文赋予不同的标签(例如,“工作”与“办公室”)。 )。在这种情况下,标签是不可靠的,但仍然包含有价值的分类信息。为了促进在这种不受限制的标签场景中进行学习,我们提出了社区指导学习(CGL),该框架允许现有分类器从不可靠标签的用户提交的数据中稳健地学习。 CGL利用数据中的基础结构和不受约束的标签来对众包数据进行智能分组。我们演示了如何使用相似性度量来确定何时以及如何拆分和合并来自不同标签类别的贡献,并展示实验结果来证明我们框架的有效性。

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