Resilience, Interpretability, and Scale in Large Complex Systems

大型复杂系统的弹性、可解释性和规模

基本信息

  • 批准号:
    RGPIN-2020-04490
  • 负责人:
  • 金额:
    $ 2.4万
  • 依托单位:
  • 依托单位国家:
    加拿大
  • 项目类别:
    Discovery Grants Program - Individual
  • 财政年份:
    2022
  • 资助国家:
    加拿大
  • 起止时间:
    2022-01-01 至 2023-12-31
  • 项目状态:
    已结题

项目摘要

Throughout my research career I have been interested in image processing problems with an explicit notion of hierarchy or scale.  In the last five to ten years, multi-scale algorithms have transformed into what are now known as convolutional neural networks (CNNs) or deep networks, a family of approaches which now dominates nearly every aspect of data analysis and computer vision.  Although these deep networks have remarkable performance, to some extent this appearance of invincibility is quite misplaced. In particular, their nonlinearity and size means that these networks are essentially uninterpretable, that there is no way to answer how the 100-million parameters in some 100-layer black box reached a certain conclusion. Furthermore, there is the unsettling observation that networks, reporting 99.9% accuracy, in fact fail for other very elementary problems. If such networks are to be used in healthcare or autonomous vehicles or countless other life-critical applications, then a degree of interpretability and network resilience is essential, and indeed is slowly being mandated by some governments. The following inter-related summaries outline the exploratory research objectives proposed under my Discovery Grant: 1. Resilience and Interpretability of Deep Networks: The unusual aspects of deep learning - fantastically robust on certain test sets, and then bafflingly catastrophic errors on others - hint at unusual patterns of learning. Since the network essentially lives in a 100-million dimensional space, visualizing the learned classification boundaries is completely out of the question, yet some insight into the learning process is essential in producing more resilient networks with more predictable learning outcomes and some degree of interpretability. 2. The role of Scale in Large Networks: Deep networks and related strategies suffer from a high computational complexity and from a limited predictability as to when the approach will or will not work. It is ambiguous how or when scale may implicitly be introduced by machine learning, although anecdotally it is known that learned filters frequently show scale-related patterns. The goal of this work is to explicitly introduce scale dependence, whether at the inputs, transferred from other networks, or explicitly into the network architecture. 3. Large Complex Systems and Nonlinear Networks: Deep networks are, in a sense, just unusually large complex nonlinear systems. However complex systems research has had relatively little connection to research into deep networks.  I would like to consider whether aspects of resilience in complex systems might lead to insights on related questions of resilience in large networks, not that the algorithm would be the same, but whether understanding of resilience might translate. All of these topics and skills are in demand across a wide range of industries, leading to outstanding training and future employment opportunities for HQP.
在我的研究生涯中,我一直对具有明确层次或尺度概念的图像处理问题感兴趣。在过去的五到十年中,多尺度算法已经转变为现在被称为卷积神经网络(CNN)或深度网络的方法,这是一系列现在几乎主导数据分析和计算机视觉各个方面的方法。尽管这些深度网络具有卓越的性能,在某种程度上,这种不可战胜的外表是完全错误的。特别是,它们的非线性和规模意味着这些网络本质上是不可解释的,没有办法回答100层黑盒子中的1亿个参数是如何得出某个结论的。此外,还有一个令人不安的观察结果,即报告99.9%准确率的网络实际上在其他非常基本的问题上失败了。如果这些网络要用于医疗保健、自动驾驶汽车或无数其他生命关键应用,那么一定程度的可解释性和网络弹性是必不可少的,事实上,一些政府正在慢慢地强制要求这样做。以下相互关联的摘要概述了探索性研究的目标下提出的发现补助金:1。深度网络的弹性和可解释性:深度学习的不寻常方面-在某些测试集上非常强大,然后在其他测试集上出现令人困惑的灾难性错误-暗示了不寻常的学习模式。由于网络基本上生活在1亿维空间中,因此可视化学习的分类边界是完全不可能的,但对学习过程的一些洞察对于产生更具弹性的网络至关重要,这些网络具有更可预测的学习结果和一定程度的可解释性。2.规模在大型网络中的作用:深度网络和相关策略的计算复杂性很高,并且对于该方法何时有效或无效的可预测性有限。机器学习如何或何时隐式地引入规模是模糊的,尽管众所周知,学习的过滤器经常显示与规模相关的模式。这项工作的目标是显式地引入规模依赖性,无论是在输入端,从其他网络转移,或显式地进入网络架构。3.大型复杂系统和非线性网络:从某种意义上说,深度网络是非常大的复杂非线性系统。然而,复杂系统研究与深度网络研究的联系相对较少,我想考虑复杂系统中弹性的各个方面是否可能导致对大型网络中弹性相关问题的见解,不是说算法会是相同的,而是对弹性的理解是否可能转化。所有这些主题和技能都在广泛的行业需求,导致优秀的培训和未来的就业机会HQP。

项目成果

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Fieguth, Paul其他文献

Constrained Watershed Method to Infer Morphology of Mammalian Cells in Microscopic Images
  • DOI:
    10.1002/cyto.a.20951
  • 发表时间:
    2010-12-01
  • 期刊:
  • 影响因子:
    3.7
  • 作者:
    Kachouie, Nezamoddin N.;Fieguth, Paul;Khademhosseini, Ali
  • 通讯作者:
    Khademhosseini, Ali
Process performance evaluation and classification via in-situ melt pool monitoring in directed energy deposition
Extended local binary patterns for texture classification
  • DOI:
    10.1016/j.imavis.2012.01.001
  • 发表时间:
    2012-02-01
  • 期刊:
  • 影响因子:
    4.7
  • 作者:
    Liu, Li;Zhao, Lingjun;Fieguth, Paul
  • 通讯作者:
    Fieguth, Paul
Virtual histological staining of label-free total absorption photoacoustic remote sensing (TA-PARS).
  • DOI:
    10.1038/s41598-022-14042-y
  • 发表时间:
    2022-06-18
  • 期刊:
  • 影响因子:
    4.6
  • 作者:
    Boktor, Marian;Ecclestone, Benjamin R.;Pekar, Vlad;Dinakaran, Deepak;Mackey, John R.;Fieguth, Paul;Haji Reza, Parsin
  • 通讯作者:
    Haji Reza, Parsin
Deep learning methods for inverse problems.
  • DOI:
    10.7717/peerj-cs.951
  • 发表时间:
    2022
  • 期刊:
  • 影响因子:
    3.8
  • 作者:
    Kamyab, Shima;Azimifar, Zohreh;Sabzi, Rasool;Fieguth, Paul
  • 通讯作者:
    Fieguth, Paul

Fieguth, Paul的其他文献

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{{ truncateString('Fieguth, Paul', 18)}}的其他基金

Resilience, Interpretability, and Scale in Large Complex Systems
大型复杂系统的弹性、可解释性和规模
  • 批准号:
    RGPIN-2020-04490
  • 财政年份:
    2021
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Discovery Grants Program - Individual
Unsupervised Machine Learning for Visual Relation Detection
用于视觉关系检测的无监督机器学习
  • 批准号:
    549003-2019
  • 财政年份:
    2021
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Alliance Grants
Resilience, Interpretability, and Scale in Large Complex Systems
大型复杂系统的弹性、可解释性和规模
  • 批准号:
    RGPIN-2020-04490
  • 财政年份:
    2020
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Discovery Grants Program - Individual
Advanced Calibration for Multiple Projector Systems
多投影仪系统的高级校准
  • 批准号:
    531853-2018
  • 财政年份:
    2020
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Collaborative Research and Development Grants
Unsupervised Machine Learning for Visual Relation Detection
用于视觉关系检测的无监督机器学习
  • 批准号:
    549003-2019
  • 财政年份:
    2020
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Alliance Grants
Advanced Calibration for Multiple Projector Systems
多投影仪系统的高级校准
  • 批准号:
    531853-2018
  • 财政年份:
    2019
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Collaborative Research and Development Grants
Scale-Coupling and Non-Locality in Large Random Fields
大随机场中的尺度耦合和非局部性
  • 批准号:
    RGPIN-2015-05866
  • 财政年份:
    2019
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Discovery Grants Program - Individual
Scale-Coupling and Non-Locality in Large Random Fields
大随机场中的尺度耦合和非局部性
  • 批准号:
    RGPIN-2015-05866
  • 财政年份:
    2018
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Discovery Grants Program - Individual
Advanced correction of projected imagery
投影图像的高级校正
  • 批准号:
    499828-2016
  • 财政年份:
    2017
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Collaborative Research and Development Grants
Scale-Coupling and Non-Locality in Large Random Fields
大随机场中的尺度耦合和非局部性
  • 批准号:
    RGPIN-2015-05866
  • 财政年份:
    2017
  • 资助金额:
    $ 2.4万
  • 项目类别:
    Discovery Grants Program - Individual

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