首页> 外文会议>Annual Conference on Learning Theory(COLT 2006); 20060622-25; Pittsburgh,PA(US) >Tracking the Best Hyperplane with a Simple Budget Perceptron
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Tracking the Best Hyperplane with a Simple Budget Perceptron

机译:使用简单的预算感知器跟踪最佳超飞机

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Shifting bounds for on-line classification algorithms ensure good performance on any sequence of examples that is well predicted by a sequence of smoothly changing classifiers. When proving shifting bounds for kernel-based classifiers, one also faces the problem of storing a number of support vectors that can grow unboundedly, unless an eviction policy is used to keep this number under control. In this paper, we show that shifting and on-line learning on a budget can be combined surprisingly well. First, we introduce and analyze a shifting Perceptron algorithm achieving the best known shifting bounds while using an unlimited budget. Second, we show that by applying to the Perceptron algorithm the simplest possible eviction policy, which discards a random support vector each time a new one comes in, we achieve a shifting bound close to the one we obtained with no budget restrictions. More importantly, we show that our randomized algorithm strikes the optimal trade-off U = Θ(B~(1/2)) between budget B and norm U of the largest classifier in the comparison sequence.
机译:在线分类算法的移位边界可确保在一系列平滑变化的分类器可以很好预测的任何示例序列上均具有良好的性能。在证明基于内核的分类器的移动边界时,除非存储策略用于控制该数量,否则还面临存储无数增长的支持向量的问题。在本文中,我们表明,按预算进行的轮班学习和在线学习可以很好地组合在一起。首先,我们介绍并分析一种在不受限预算的情况下实现最著名的换挡界限的换挡Perceptron算法。其次,我们表明,通过将最简单的驱逐策略应用于Perceptron算法,该策略在每次有新的支持向量时都会丢弃一个随机支持向量,从而实现了与预算无限制地接近的转移边界。更重要的是,我们证明了我们的随机算法在比较序列中达到了预算B和最大分类器范数U之间的最佳折衷U =Θ(B〜(1/2))。

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