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Cooperative Techniques Supporting Sensor-Based People-Centric Inferencing

机译:支持传感器的人以人为本的推理的合作技巧

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摘要

People-centric sensor-based applications targeting mobile device users offer enormous potential. However, learning inference models in this setting is hampered by the lack of labeled training data and appropriate feature inputs. Data features that lead to better classification models are not available at all devices due to device heterogeneity. Even for devices that provide superior data features, models require sufficient training data, perhaps manually labeled by users, before they work well. We propose opportunistic feature vector merging, and the social-network-driven sharing of training data and models between users. Model and training data sharing within social circles combine to reduce the user effort and time involved in collecting training data to attain the maximum classification accuracy possible for a given model, while feature vector merging can enable a higher maximum classification accuracy by enabling better performing models even for more resource-constrained devices. We evaluate our proposed techniques with a significant places classifier that infers and tags locations of importance to a user based on data gathered from cell phones.
机译:以人为本的基于传感器的应用程序,目标是移动设备用户提供巨大的潜力。但是,此设置中的学习推理模型因缺乏标记的培训数据和适当的特征输入而受到阻碍。由于设备异质性,所有设备都不提供导致更好分类模型的数据功能。即使对于提供卓越数据特征的设备,型号也需要足够的培训数据,也许是由用户手动标记的,在它们工作之前。我们提出了机会主义的特征向量合并,以及用户之间的培训数据和模型的社交网络驱动的共享。在社交界中共享的模型和培训数据共享,以减少收集培训数据的用户努力和时间,以获得给定模型的最大分类准确性,而特征向量合并可以通过使更好的执行模型实现更高的最大分类精度即使对于更多资源约束设备。我们评估我们的建议技术,其中有一个重要的地方分类器,其基于从手机收集的数据,揭示和标记对用户的重要性的位置。

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