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Meta-algorithm to Choose a Good On-Line Prediction (Short Paper)

机译:选择良好在线预测的元算法(简短论文)

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Numerous problems require an on-line treatment. The variation of the problem instance makes it harder to solve: an algorithm used may be very efficient for a long period but suddenly its performance deteriorates due to a change in the environment. It could be judicious to switch to another algorithm in order to adapt to the environment changes. In this paper, we focus on the prediction on-the-fly. We have several on-line prediction algorithms at our disposal, each of them may have a different behaviour than the others depending on the situation. First, we address a meta-algorithm named SEA developed for experts algorithms. Next, we propose a modified version of it to improve its performance in the context of the on-line prediction. We confirm the efficiency gain we obtained through this modification in experimental manner.
机译:许多问题需要在线处理。问题实例的变化使解决起来更加困难:所使用的算法在很长一段时间内可能非常有效,但是由于环境的变化,其性能突然下降。为了适应环境变化而切换到另一种算法可能是明智的。在本文中,我们专注于即时预测。我们有几种在线预测算法可供使用,根据情况的不同,每种算法的行为都可能与其他算法不同。首先,我们介绍一种为专家算法开发的名为SEA的元算法。接下来,我们提出了它的改进版本,以在在线预测的背景下提高其性能。我们以实验方式确认了通过此修改获得的效率增益。

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