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Re-adapting the Regularization of Weights for Non-stationary Regression

机译:重新适应非平稳回归的权重正则化

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摘要

The goal of a learner in standard online learning is to have the cumulative loss not much larger compared with the best-performing prediction-function from some fixed class. Numerous algorithms were shown to have this gap arbitrarily close to zero compared with the best function that is chosen off-line. Nevertheless, many real-world applications (such as adaptive filtering) are non-stationary in nature and the best prediction function may not be fixed but drift over time. We introduce a new algorithm for regression that uses per-feature-learning rate and provide a regret bound with respect to the best sequence of functions with drift. We show that as long as the cumulative drift is sub-linear in the length of the sequence our algorithm suffers a regret that is sub-linear as well. We also sketch an algorithm that achieves the best of the two worlds: in the stationary settings has log(T) regret, while in the non-stationary settings has sub-linear regret. Simulations demonstrate the usefulness of our algorithm compared with other state-of-the-art approaches.
机译:学习者在标准在线学习中的目标是,与某些固定班级的最佳预测功能相比,累积损失不大。与离线选择的最佳函数相比,许多算法都显示出该间隙任意接近零。但是,许多现实世界中的应用程序(例如自适应滤波)本质上是不稳定的,最佳预测功能可能不会固定,而是会随时间推移而漂移。我们介绍了一种新的回归算法,该算法使用了每个功能的学习率,并且对具有漂移的最佳函数序列提供了遗憾。我们证明,只要累积漂移在序列的长度上是亚线性的,我们的算法就会感到遗憾,它也是亚线性的。我们还勾画出一种算法,该算法可以实现两个世界中的最佳:在静态设置中,有log(T)后悔,而在非静态设置中,有次线性后悔。与其他最新方法相比,仿真证明了我们算法的有效性。

著录项

  • 来源
    《Algorithmic learning theory》|2011年|p.114-128|共15页
  • 会议地点 Espoo(FI);Espoo(FI)
  • 作者

    Nina Vaits; Koby Crammer;

  • 作者单位

    Department of Electrical Engneering, The Technion, Haifa, Israel;

    Department of Electrical Engneering, The Technion, Haifa, Israel;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
  • 关键词

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