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Harnessing the strengths of anytime algorithms for constant data streams

机译:利用随时可用算法的优势,获得恒定数据流

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摘要

Anytime algorithms have been proposed for many different applications, e.g., in data mining. Their strengths are the ability to first provide a result after a very short initialization and second to improve their result with additional time. Therefore, anytime algorithms have so far been used when the available processing time varies, e.g., on varying data streams. In this paper we propose to employ anytime algorithms on constant data streams, i.e., for tasks with constant time allowance. We introduce two approaches that harness the strengths of anytime algorithms on constant data streams and thereby improve the over all quality of the result with respect to the corresponding budget algorithm. We derive formulas for the expected performance gain and demonstrate the effectiveness of our novel approaches using existing anytime algorithms on benchmark data sets.
机译:随时都提出了针对许多不同应用的算法,例如数据挖掘。它们的优势在于能够在非常短的初始化后首先提供结果,其次可以通过增加时间来改善其结果。因此,到目前为止,当可用的处理时间例如在变化的数据流上变化时,任何时候都使用算法。在本文中,我们建议对恒定数据流采用随时算法,即用于具有恒定时间余量的任务。我们介绍两种利用恒定时间数据流上随时算法的优势的方法,从而相对于相应的预算算法提高结果的整体质量。我们得出了预期性能提高的公式,并使用现有的随时可用于基准数据集的算法来证明我们新颖方法的有效性。

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