Tags: unsupervised learning

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  1. Machine Learning in Physics

    04 Nov 2021 | Contributor(s):: Nicolas Onofrio

    Lectures and tutorials to learn how to write machine learning programs with Python

  2. MatSci 395 Lecture 1: Introduction to Machine Learning, Materials Imaging, and Segmentation

    Online Presentations | 29 Sep 2021 | Contributor(s):: Tiberiu Stan

  3. Unsupervised Clustering Methods for Image Segmentation: Application to Scanning Electron Microscopy Images of Graphene

    Online Presentations | 27 Jan 2021 | Contributor(s):: Aagam Rajeev Shah

    This tutorial will introduce you to some basic image segmentation techniques driven by unsupervised machine learning techniques such as the Gaussian mixture model and k-means clustering. You will learn how to implement k-means clustering and template matching, and use these to segment a...

  4. Hands-on Unsupervised Learning using Dimensionality Reduction via Matrix Decomposition (2nd offering)

    Online Presentations | 30 Apr 2020 | Contributor(s):: Michael N Sakano, Alejandro Strachan

    This tutorial introduces unsupervised machine learning algorithms through dimensionality reduction via matrix decomposition techniques in the context of chemical decomposition of reactive materials in a Jupyter notebook on nanoHUB.org. The tool used in this demonstration...

  5. Hands-on Unsupervised Learning using Dimensionality Reduction via Matrix Decomposition (1st offering)

    Online Presentations | 29 Apr 2020 | Contributor(s):: Michael N Sakano, Alejandro Strachan

    This tutorial introduces unsupervised machine learning algorithms through dimensionality reduction via matrix decomposition techniques in the context of chemical decomposition of reactive materials in a Jupyter notebook on nanoHUB.org. The tool used in this demonstration...

  6. Apr 20 2020

    Unsupervised learning: dimensionality reduction via matrix decomposition

    Topics covered in this session:Introduction to PCA and NMF methodsHands-on example of detecting chemistry in explosivesOrganizers: Alejandro Strachan, Saaketh DesaiLeader: Michael SakanoRegister...

    https://nanohub.org/events/details/1850

  7. Apr 17 2020

    Unsupervised learning: dimensionality reduction via matrix decomposition

    Topics covered in this session:Introduction to PCA and NMF methodsHands-on example of detecting chemistry in explosivesOrganizers: Alejandro Strachan, Saaketh DesaiLeader: Michael SakanoRegister...

    https://nanohub.org/events/details/1844

  8. Unsupervised learning using dimensionality reduction via matrix decomposition

    Tools | 14 Apr 2020 | Contributor(s):: Michael N Sakano, Alejandro Strachan

    Learn PCA and NMF via chemistry example

  9. [Illinois] MCB 493 Lecture 5: Unsupervised Learning and Distributed Representations

    Online Presentations | 29 Oct 2013 | Contributor(s):: Thomas J. Anastasio

    Unsupervised learning algorithms, given only a set of input patterns, can train neural networks to form distributed representations of those patterns that resemble brain maps.

  10. [Illinois] MCB 493 Lecture 8: Information Transmission and Unsupervised Learning

    Online Presentations | 29 Oct 2013 | Contributor(s):: Thomas J. Anastasio

    Unsupervised learning algorithms can train neural networks to increase the amount of information they contain about their inputs and simulate the properties of sensory neurons.