"Unsupervised" Machine Learning

This course covers unsupervised learning, clustering, PCA, and pattern detection using advanced data analysis techniques.

introduction

"Unsupervised" Machine Learning

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For who?

We recommend this course if you:

This course is for:

  • Data Scientists looking to enhance their skills in unsupervised machine learning and pattern detection.
  • Business Analysts seeking to understand complex data sets and identify hidden patterns for informed decision-making.
  • Market Researchers who want to apply clustering and segmentation techniques to define market niches.
  • Consultants aiming to specialize in data analysis and provide actionable insights through advanced techniques.
  • Students and Aspiring Data Professionals wanting to build expertise in dimensionality reduction and clustering methods.
  • Machine Learning Enthusiasts interested in exploring unsupervised learning algorithms for practical applications.

By the end of the course, participants will be equipped to reduce data complexity, identify patterns, and apply clustering techniques using both proprietary and open-source tools.

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features

Advantages and features of the course:

Workshop Overview

It is common to have data sets with multiple variables describing business topics. But how can we extract all the hidden patterns from such complex data sets? Reducing the number of variables into simple "maps" with PCA becomes essential to highlight invisible relations within the data, facilitating the correct actions to take. This workshop also explains the difference between scientific market "clustering" and simple common sense "filtering". It empowers the definition of market niches and profiles them using Data Analysis techniques. Additionally, the program covers illustrations that reveal associations between the components of multiple variables for efficient tracking of pattern evolution. The workshop also includes practical applications with two different technologies, allowing participants to become more like consultants than mere experts.

Learning Outcomes

  • Highlighting the role of statistical data analysis in Unsupervised Machine Learning.
  • Discovering hidden patterns within data sets.
  • Understanding the "Dimension Reducibility" concept.
  • Mastering all "pattern finding" algorithms in AI applications.
  • Mapping complex data sets of multiple variables in simple charts.
  • Visualizing relationships between variables and categories.
  • Evaluating the quality of reduced multidimensionality.
  • Differentiating between clustering and filtering.
  • Delving into all clustering techniques and their applications
  • Running professional segmentation with clustering.
  • Applying it all using specialized software.

Duration 5 days

Day 1:

- Matrix Factorization

- Principal Component Analysis  

Day 2:

- t-SNE and Multi-Dimensional Scaling

- Simple Correspondence Analysis

Day 3:

- Agglomerative Clustering

- K Means and Medoids

Day 4:

- Recommender Systems

Day 5:

- Gaussian Mixture Models

What will it be about?

- Colored PPT documents / Videos.

- Multidimensional Reducibility

- Hierarchical   vs. Divisive Clustering

- Proprietary vs. Open Source tools   solutions

- Eigenvalues and Eigenvectors

- Team Exercises

- The science behind mapping illustration.

- Quality   measurements of unsupervised models

- Demystifying the Curse of   Multidimensionality

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Teacher leading this course

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We have partnerships with international
professional organizations that specialize in professional training and have unique and up-to-date quality programs for our students.

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