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Combining structural knowledge with sparsity in machine learning and signal processing.

机译:在机器学习和信号处理中将结构知识与稀疏性相结合。

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摘要

With the advancement of technology, we are able to collect, store, and transmit an ever-increasing volume of data. However, our ability to extract useful patterns from this massive amount of data is still lagging behind. Machine learning and signal processing research aims to address fundamental issues in discovering the hidden structure in large-scale data, and to develop practical algorithms for real-world applications.;In this thesis, we take a deep look at two fundamental elements in machine learning and signal processing research. The first element is sparsity . The sparsity principle emphasizes the importance of having simple representations of patterns. The second element is structural knowledge , which emphasizes the importance of respecting structure in the patterns. In this thesis, we argue that although sparsity leads to many effective machine learning and signal processing algorithms, simply considering sparsity is not enough, and that combining structural knowledge with sparsity leads to better algorithm performance and deeper theoretical understanding. By designing and analyz- ing machine learning and signal processing algorithms that utilize both structural knowledge and sparsity, we demonstrate that combining structural knowledge with sparsity is a useful strategy in various signal and data representation, denoising and classification problems.;Under the unifying theme of combining structural knowledge with sparsity, this thesis takes us on a tour of a variety of problems in machine learning and signal processing, including boost- ing classification algorithms, image denoising methods, wavelet transforms, dictionary learning and solving lasso problems. We will study how structural knowledge and sparsity interact with each other in these different contexts, and demonstrate the importance of combining structural knowl- edge with sparsity. The work in this thesis helps to strengthen our understanding of the role that structural knowledge and sparsity play in machine learning and signal processing and to improve various sparsity inspired data analysis algorithms.
机译:随着技术的进步,我们能够收集,存储和传输不断增长的数据量。但是,我们从大量数据中提取有用模式的能力仍然落后。机器学习和信号处理研究旨在解决发现大规模数据中隐藏结构的基本问题,并为实际应用开发实用的算法。本文对机器学习的两个基本要素进行了深入研究。和信号处理研究。第一个要素是稀疏性。稀疏性原则强调具有模式的简单表示的重要性。第二个要素是结构知识,它强调在模式中尊重结构的重要性。在本文中,我们认为,尽管稀疏性导致许多有效的机器学习和信号处理算法,但仅考虑稀疏性是不够的,而将结构性知识与稀疏性相结合会带来更好的算法性能和更深的理论理解。通过设计和分析同时利用结构知识和稀疏性的机器学习和信号处理算法,我们证明了将结构知识与稀疏性相结合是在各种信号和数据表示,去噪和分类问题中的有用策略。结合结构知识和稀疏性,本论文带我们参观了机器学习和信号处理中的各种问题,包括增强分类算法,图像去噪方法,小波变换,字典学习和解决套索问题。我们将研究结构知识和稀疏性在这些不同背景下如何相互作用,并说明将结构性知识与稀疏性相结合的重要性。本文的工作有助于加深我们对结构知识和稀疏性在机器学习和信号处理中的作用的理解,并改善各种稀疏性启发式数据分析算法。

著录项

  • 作者

    Xiang, Zhen James.;

  • 作者单位

    Princeton University.;

  • 授予单位 Princeton University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 154 p.
  • 总页数 154
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:42:46

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