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Course Description

In this course, you will focus on measuring distance — the dissimilarity of various documents. The goal is to discover how alike or unlike various groups of text documents are to one another. At scale, this is a problem you might encounter if you need to group thousands of products together purely by using their product description or if you would like to recommend a movie to someone based on whether they liked a different movie. You will work with several different data sets and use both hierarchical and k-means clustering to create clusters, and you will practice with several distance measures to analyze document similarity. Finally, you will create visualizations that help to convey similarity in powerful ways so stakeholders can easily understand the key takeaways of any clustering or distance measure that you create.

You are required to have completed the following courses or have equivalent experience before taking this course:

  • Natural Language Processing Fundamentals
  • Transforming Text Into Numeric Vectors
  • Classifying Documents With Supervised Machine Learning
  • Topic Modeling With Unsupervised Machine Learning

Faculty Author

Dr. Oleg Melnikov

Benefits to the Learner

  • Analyze term and document similarity using various distance measures
  • Use and evaluate hierarchical clustering to group similar documents
  • Use and evaluate k-means clustering to group similar documents and measure quality

Target Audience

  • Engineers
  • Software developers
  • Computer scientists new to NLP
  • Data scientists
  • Analysts
  • Researchers
  • Linguists

Applies Towards the Following Certificates

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Enroll Now - Select a section to enroll in
Type
3 week
Dates
Jul 03, 2024 to Jul 23, 2024
Total Number of Hours
24.0
Course Fee(s)
Regular Price $1,199.00
Type
3 week
Dates
Sep 11, 2024 to Oct 01, 2024
Total Number of Hours
24.0
Course Fee(s)
Regular Price $1,199.00
Type
3 week
Dates
Nov 20, 2024 to Dec 10, 2024
Total Number of Hours
24.0
Course Fee(s)
Regular Price $1,199.00
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