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Asking the right questions

机译:问正确的问题

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摘要

In several database applications, parameters like selectivities and load are known only with some associated uncertainty, which is specified, or modeled, as a distribution over values. The performance of query optimizers and monitoring schemes can be improved by spending resources like time or bandwidth in observing or resolving these parameters, so that better query plans can be generated. In a resource-constrained situation, deciding which parameters to observe in order to best optimize the expected quality of the plan generated (or in general, optimize the expected value of a certain objective function) itself becomes an interesting optimization problem.We present a framework for studying such problems, and present several scenarios arising in anomaly detection in complex systems, monitoring extreme values in sensor networks, load shedding in data stream systems, and estimating rates in wireless channels and minimum latency routes in networks, which can be modeled in this framework with the appropriate objective functions.Even for several simple objective functions, we show the problems are Np-Hard. We present greedy algorithms with good performance bounds. The proof of the performance bounds are via novel sub-modularity arguments.
机译:在一些数据库应用程序中,仅在具有某些相关不确定性的情况下才知道诸如选择性和负载之类的参数,这些不确定性已指定或建模为值的分布。通过在观察解析这些参数上花费时间或带宽之类的资源,可以提高查询优化器和监视方案的性能,从而可以生成更好的查询计划。在资源有限的情况下,决定要观察哪些参数以最佳地优化生成的计划的预期质量(或者通常是优化某个目标函数的预期值)本身成为一个有趣的优化问题。我们提出了一个框架为了研究此类问题,并提出了在复杂系统中进行异常检测,监视传感器网络中的极值,数据流系统中的负载减少以及估计网络中无线信道的速率和最小等待时间路由而产生的几种情况,可以在此模型中进行建模。即使对于几个简单的目标函数,我们也显示出问题是N p -H ard 。我们提出了具有良好性能范围的贪婪算法。性能界限的证明是通过新颖的次模量论证来实现的。

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