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An evolutionary method for training autoencoders for deep learning networks.

机译:一种用于训练深度学习网络的自动编码器的进化方法。

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摘要

Introduced in 2006, Deep Learning has made large strides in both supervised an unsupervised learning. The abilities of Deep Learning have been shown to beat both generic and highly specialized classification and clustering techniques with little change to the underlying concept of a multi-layer perceptron. Though this has caused a resurgence of interest in neural networks, many of the drawbacks and pitfalls of such systems have yet to be addressed after nearly 30 years: speed of training, local minima and manual testing of hyper-parameters.;In this thesis we propose using an evolutionary technique in order to work toward solving these issues and increase the overall quality and abilities of Deep Learning Networks. In the evolution of a population of autoencoders for input reconstruction, we are able to abstract multiple features for each autoencoder in the form of hidden nodes, scoring the autoencoders based on their ability to reconstruct their input, and finally selecting autoencoders for crossover and mutation with hidden nodes as the chromosome. In this way we are able to not only quickly find optimal abstracted feature sets but also optimize the structure of the autoencoder to match the features being selected. This also allows us to experiment with different training methods in respect to data partitioning and selection, reducing overall training time drastically for large and complex datasets. This proposed method allows even large datasets to be trained quickly and efficiently with little manual parameter choice required by the user, leading to faster, more accurate creation of Deep Learning Networks.
机译:深度学习于2006年推出,在无监督学习和无监督学习方面都取得了长足的进步。事实证明,深度学习的能力可以击败通用和高度专业化的分类和聚类技术,而对多层感知器的基本概念几乎没有改变。尽管这引起了人们对神经网络的兴趣的兴起,但这种系统的许多缺点和陷阱在将近30年后仍未解决:训练速度,局部最小值和超参数的手动测试。提出使用进化技术来努力解决这些问题并提高深度学习网络的整体质量和能力。在大量用于输入重构的自动编码器的发展过程中,我们能够以隐藏节点的形式为每个自动编码器抽象多个特征,根据其重构输入的能力对自动编码器进行评分,最后选择用于交叉和变异的自动编码器隐藏的节点作为染色体。这样,我们不仅可以快速找到最佳的抽象特征集,还可以优化自动编码器的结构以匹配所选特征。这也使我们可以在数据分区和选择方面尝试不同的训练方法,从而大大减少了大型和复杂数据集的总体训练时间。这种提议的方法甚至可以通过用户很少的手动参数选择来快速而有效地训练大型数据集,从而更快,更准确地创建深度学习网络。

著录项

  • 作者

    Lander, Sean.;

  • 作者单位

    University of Missouri - Columbia.;

  • 授予单位 University of Missouri - Columbia.;
  • 学科 Computer science.;Artificial intelligence.
  • 学位 M.S.
  • 年度 2014
  • 页码 43 p.
  • 总页数 43
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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