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The Group-Lasso: ?_(1,∞) Regularization versus ?_(1,2) Regularization

机译:Group-Lasso:?_(1,∞)正则化与?_(1,2)正则化

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摘要

The ?_(1,∞) norm and the ?_(1,2) norm are well known tools for joint regularization in Group-Lasso methods. While the ?_(1,2) version has been studied in detail, there are still open questions regarding the uniqueness of solutions and the efficiency of algorithms for the ?_(1,∞) variant. For the latter, we characterize the conditions for uniqueness of solutions, we present a simple test for uniqueness, and we derive a highly efficient active set algorithm that can deal with input dimensions in the millions. We compare both variants of the Group-Lasso for the two most common application scenarios of the Group-Lasso, one is to obtain sparsity on the level of groups in "standard" prediction problems, the second one is multi-task learning where the aim is to solve many learning problems in parallel which are coupled via the Group-Lasso constraint. We show that both version perform quite similar in "standard" applications. However, a very clear distinction between the variants occurs in multi-task settings where the ?_(1,2) version consistently outperforms the ?_(1,∞) counterpart in terms of prediction accuracy.
机译:?_(1,∞)范数和?_(1,2)范数是在Group-Lasso方法中进行联合正则化的众所周知的工具。尽管已对?_(1,2)版本进行了详细研究,但对于?_(1,∞)变体的解的唯一性和算法的效率,仍然存在悬而未决的问题。对于后者,我们表征了解决方案唯一性的条件,给出了唯一性的简单测试,并且得出了可以处理数百万个输入维的高效活动集算法。我们针对Group-Lasso的两种最常见的应用场景比较了Group-Lasso的两种变体,一种是在“标准”预测问题中获得组级别的稀疏性,第二种是旨在实现目标的多任务学习通过Group-Lasso约束并行解决许多学习问题。我们表明,这两个版本在“标准”应用程序中的性能都非常相似。但是,在多任务设置中,在预测准确度方面,?_(1,2)版本始终胜过?_(1,∞),在变式之间存在非常明显的区别。

著录项

  • 来源
    《Pattern recognition》|2010年|p.252-261|共10页
  • 会议地点 Darmstadt(DE);Darmstadt(DE);Darmstadt(DE)
  • 作者

    Julia E. Vogt; Volker Roth;

  • 作者单位

    Department of Computer Science, University of Basel, Bernoullistr. 16, CH-4056 Basel, Switzerland;

    Department of Computer Science, University of Basel, Bernoullistr. 16, CH-4056 Basel, Switzerland;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 模式识别与装置;
  • 关键词

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