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Convex Optimization Algorithms and Recovery Theories for Sparse Models in Machine Learning

机译:机器学习中稀疏模型的凸优化算法和恢复理论

摘要

Sparse modeling is a rapidly developing topic that arises frequently in areas such as machine learning, data analysis and signal processing. One important application of sparse modeling is the recovery of a high-dimensional object from relatively low number of noisy observations, which is the main focuses of the Compressed Sensing, Matrix Completion(MC) and Robust Principal Component Analysis (RPCA) . However, the power of sparse models is hampered by the unprecedented size of the data that has become more and more available in practice. Therefore, it has become increasingly important to better harnessing the convex optimization techniques to take advantage of any underlying "sparsity" structure in problems of extremely large size. This thesis focuses on two main aspects of sparse modeling. From the modeling perspective, it extends convex programming formulations for matrix completion and robust principal component analysis problems to the case of tensors, and derives theoretical guarantees for exact tensor recovery under a framework of strongly convex programming. On the optimization side, an efficient first-order algorithm with the optimal convergence rate has been proposed and studied for a wide range of problems of linearly constraint sparse modeling problems.
机译:稀疏建模是一个快速发展的主题,在机器学习,数据分析和信号处理等领域经常出现。稀疏建模的一个重要应用是从相对较少的噪声观测中恢复高维对象,这是压缩感知,矩阵完成(MC)和鲁棒主成分分析(RPCA)的主要重点。但是,稀疏模型的功能受到前所未有的数据规模的限制,而在实践中,数据的规模越来越大。因此,在极端大的问题中,更好地利用凸优化技术来利用任何潜在的“稀疏”结构变得越来越重要。本文主要研究稀疏建模的两个主要方面。从建模的角度来看,它把凸矩阵规划的凸规划公式和鲁棒的主成分分析问题扩展到张量的情况,并在强凸规划的框架下为精确的张量恢复提供了理论保证。在优化方面,针对线性约束稀疏建模问题的广泛问题,提出了一种具有最优收敛速度的高效一阶算法。

著录项

  • 作者

    Huang Bo;

  • 作者单位
  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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