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A Sampling-Based Approach to Optimizing Top-k Queries In Sensor Networks

机译:一种基于采样的方法来优化传感器网络中的Top-K查询

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Wireless sensor networks generate a vast amount of data. This data, however, must be sparingly extracted to conserve energy, usually the most precious resource in battery-powered sensors. When approximation is acceptable, a model-driven approach to query processing is effective in saving energy by avoiding contacting nodes whose values can be predicted or are unlikely to be in the result set. To optimize queries such as top-k, however, reasoning directly with models of joint probability distributions can be prohibitively expensive. Instead of using models explicitly, we propose to use samples of past sensor readings. Not only are such samples simple to maintain, but they are also computationally efficient to use in query optimization. With these samples, we can formulate the problem of optimizing approximate top-k queries under an energy constraint as a linear program. We demonstrate the power and flexibility of our sampling-based approach by developing a series of top-k query planning algorithms with linear programming, which are capable of efficiently producing plans with better performance and novel features. We show that our approach is both theoretically sound and practically effective on simulated and real-world datasets.
机译:无线传感器网络生成大量数据。然而,必须谨慎地提取该数据以节省能量,通常是电池供电传感器中最珍贵的资源。当近似是可接受的时,通过避免可以预测值或不太可能在结果集中的接触节点来节省能量的模型驱动的方法是有效的。然而,优化Top-K等查询,直接用联合概率分布的模型直接推理可能是昂贵的。我们建议使用过去传感器读数的样本而不是明确使用模型。不仅可以维护的样本,而且它们还可以在Query优化中计算使用。通过这些样本,我们可以制定在能量约束下优化近似顶部k查询的问题作为线性程序。我们通过开发一系列具有线性编程的TOP-K查询计划算法,展示了基于采样的方法的力量和灵活性,该算法能够有效地生产具有更好性能和新功能的计划。我们表明我们的方法在理论上是声音,并且实际上在模拟和现实世界数据集上有效。

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